Codeproject Blue Iris Verified
-
CodeProject: CodeProject is a well-known online community and repository of code and software development articles. It hosts a wide range of programming projects and articles across various domains.
-
Blue Iris: Blue Iris could refer to a specific software project, application, or even a surveillance system that might involve AI or machine learning, given the name's association with technology and innovation. It might also relate to a project focused on computer vision or security.
-
Verified: The term "verified" often implies a process of validation or authentication. In the context of CodeProject and a specific project named Blue Iris, it could mean that the project or a component of it has been validated against certain standards or requirements.
Given the lack of specific context, here are a few possible interpretations:
-
Successful Project Verification: If Blue Iris is a project hosted on or discussed at CodeProject, and it's been verified, this could mean the project has met certain coding standards, functional requirements, or has been authenticated as a genuine and useful contribution.
-
Security or Surveillance Application: If Blue Iris pertains to a surveillance or security application, verification could relate to the validation of its effectiveness, security, or compliance with specific standards.
-
AI or ML Model Validation: If Blue Iris involves AI or machine learning, verification could imply that the model has been validated for accuracy, reliability, or performance.
To get more precise information, you might want to:
- Check CodeProject Directly: Look for the project or article directly on CodeProject.
- Read Documentation or Articles: If there are associated articles or documentation, read through them for details on what "verified" means in that context.
- Community Engagement: Engage with the community on CodeProject or related forums if you have specific questions.
If you have more details or a different way to frame your question, I'd be happy to try and assist further!
Blue Iris and CodeProject.AI represent a significant leap in DIY home security, transforming standard surveillance into an intelligent monitoring system. While "Blue Iris" refers to the industry-leading Video Management Software (VMS)
, "CodeProject.AI" serves as the powerful engine that processes video feeds to identify specific objects like people, cars, or animals. A "verified" setup typically refers to the successful integration and confirmation that these two systems are communicating correctly to filter out false alerts. The Evolution of Smart Surveillance
Traditionally, motion detection was prone to "false positives"—alerts triggered by wind, shadows, or insects. By integrating CodeProject.AI, Blue Iris users can transition from simple motion sensing to object-based triggers Intelligent Filtering
: The system can be configured to only notify the user if a "Person" or "Vehicle" is detected, ignoring environmental noise. Verified Detection
: When a motion event occurs, Blue Iris sends the frame to CodeProject.AI. If the AI confirms (verifies) the object matches the criteria, a formal alert is logged. Key Components for a Verified Setup
To achieve a stable, verified integration, users must focus on hardware optimization and software configuration: Hardware Acceleration
: AI processing is computationally heavy. Users often add dedicated GPUs or specialized hardware like the Coral Accelerator to ensure notifications are delivered in near real-time. Model Selection
: CodeProject.AI allows for different "models"—small, medium, or large—depending on the desired accuracy versus speed. Blue Iris Configuration
: Within the camera's "Alerts" tab, the AI settings must point to the local CodeProject.AI server IP and port. The Role of Community and Verification
The term "verified" is also frequently used in community discussions to describe configurations that have been tested and confirmed to work with specific versions of both software packages. Since both Blue Iris and CodeProject.AI receive frequent updates, the community on platforms like Reddit's Blue Iris subreddit CodeProject AI forums
serves as a vital resource for troubleshooting compatibility issues.
Ultimately, a "CodeProject Blue Iris Verified" setup provides peace of mind by ensuring that when your phone pings, there is a high-probability of a genuine event worth your attention. Are you currently setting up and looking for help with the AI configuration hardware recommendations Adding functionality with Vibe coding - Facebook
The integration of CodeProject.AI Video Management Software (VMS) represents a pivotal shift from simple motion-based alerts to intelligent, verified event detection. By moving away from pixel-change triggers—which often produce false positives from shadows or rain—the system now uses a "verified" method where an AI server confirms the presence of specific objects before a user is notified. The Evolution of Verification
For years, Blue Iris users relied on basic motion sensors that struggled to distinguish between a swaying tree and an intruder. The software eventually integrated , but has since transitioned to recommending the CodeProject.AI Server as its primary engine for "verified" alerts.
When a camera detects motion, Blue Iris sends a frame to CodeProject.AI. The AI analyzes the image against pre-trained models (like
) and returns a "verified" confirmation only if it identifies a specific target—such as a person, car, dog, or license plate. Key Benefits of Integration False Alert Reduction
: Users can configure the system to trigger push notifications only when a specific object (e.g., "person") is confirmed by the AI, effectively filtering out "noise" from environmental changes. Face Recognition & LPR
: Beyond simple detection, the integration supports advanced "Face Processing" to identify known individuals and "License Plate Recognition" (LPR) to log vehicles automatically. Hardware Optimization
: The system is highly adaptive, allowing users to process AI locally using a standard CPU, a dedicated NVIDIA GPU for faster speeds, or even a Google Coral AI chip to offload processing tasks. Strategic Deployment
CodeProject.AI is the primary AI integration for Blue Iris, having largely replaced DeepStack as the default choice for local object detection. It is generally well-regarded for reducing false alerts by verifying motion through computer vision. Core Capabilities
Verified Detection: Filters motion alerts to confirm specific objects like people, cars, dogs, and trucks.
Advanced Features: Supports specialized modules for Face Recognition and License Plate Recognition (ALPR).
Local Processing: Runs entirely on your local hardware (no cloud needed), which preserves privacy and reduces latency. Performance & Hardware
The software is demanding and its performance varies significantly based on your hardware configuration: CodeProject.AI for Blue Iris - Installation and Setup
CodeProject.AI Server integration with Blue Iris enables fast, private, and local object detection, marking alerts as "Verified" when the AI confirms objects like people or cars. This setup utilizes high-resolution snapshot analysis via models like YOLOv5, allowing users to configure confidence thresholds and specific labels for real-time alert verification. For more details, visit CodeProject. AI responses may include mistakes. Learn more
Integrating CodeProject.AI into a Blue Iris surveillance system represents a significant shift from traditional motion-based detection to intelligent, object-verified security. By utilizing a dedicated local AI server, users can drastically reduce false alarms caused by environmental changes like shadows or moving foliage. The Role of "Verified" Detection
In the context of Blue Iris, a "verified" alert refers to a scenario where the software detects motion and then sends that specific frame to the CodeProject.AI Server for confirmation.
Object Identification: The AI analyzes the image to identify specific objects such as people, cars, dogs, or delivery trucks.
Confidence Thresholds: Users can set confidence levels (e.g., 60% or higher) to ensure that Blue Iris only records or sends a notification if the AI is reasonably certain of its finding.
Alert Customization: This verification allows for advanced "On Alert" actions, where different responses are triggered based on the detected object—for example, sending a specific mobile notification only when a "person" is spotted on the porch. Performance and Hardware
To achieve fast and reliable verification, the hardware used for the AI processing is critical:
CPU vs. GPU: While CodeProject.AI can run on a standard CPU, utilizing an Nvidia GPU or a Coral Edge TPU significantly speeds up detection and reduces system lag. codeproject blue iris verified
Local Processing: Unlike cloud-based systems, this entire verification process happens locally on your home network, ensuring privacy and eliminating monthly subscription fees.
Integration: Recent updates have seen the CodeProject team work directly with Blue Iris developers to optimize this workflow, replacing older tools like DeepStack. Challenges and Fine-Tuning CodeProject.AI for Blue Iris - Installation and Setup
I’m unable to locate a specific blog post titled "codeproject blue iris verified" directly, as I don’t have live browsing access or a real-time index of every CodeProject article.
However, based on common usage of that phrase:
- CodeProject.AI is an AI server often used with Blue Iris (Windows-based video surveillance software).
- "Verified" in this context usually refers to a verified alert — meaning CodeProject.AI has confirmed an object detection (person, vehicle, animal, etc.) rather than just a motion trigger.
If you’re looking for a blog post that explains:
- How to set up CodeProject.AI with Blue Iris
- What "verified" means in alerts
- Tuning confidence thresholds for verification
…then a typical article would include:
- Installation of CodeProject.AI server
- Integration with Blue Iris → AI settings → object detection
- Verification logic — Blue Iris sends images, AI returns labels & confidence, and only if confidence > threshold does it mark as "verified"
- Benefits — reduces false alerts from shadows, rain, spiders, etc.
If you can recall:
- The approximate publish date
- The author name
- Or any other keywords from the post (e.g., “YOLO,” “DeepStack,” “custom models”)
…I can help you reconstruct or locate it more precisely. Otherwise, you might search directly on:
codeproject.com(site search)- IP Cam Talk forums (Blue Iris + CodeProject.AI discussions)
- Google with:
"blue iris" "codeproject.ai" verified blog
Smart Security: Mastering Blue Iris with Verified AI Detections
Integrating CodeProject.AI into your Blue Iris surveillance setup has become the gold standard for home security enthusiasts. Moving away from legacy systems like DeepStack, this combination offers "verified" event detection, which uses locally hosted artificial intelligence to confirm exactly what is happening in your camera's frame before sending an alert. Why "Verified" Matters
Traditional motion detection in NVR (Network Video Recorder) software is often triggered by changes in pixels—meaning a blowing tree branch or a passing cloud can result in a false alarm.
Verified Detections: When Blue Iris senses movement, it sends a snapshot to the CodeProject.AI server.
Object Confirmation: The AI "verifies" if the motion was caused by a specific object, such as a person, vehicle, dog, or even a license plate.
Smart Alerts: You only receive a push notification if the AI confirms the target you care about. Core Features of CodeProject.AI Integration
Integrating these tools turns a standard security system into a proactive monitoring hub:
Face Recognition: Train the system to recognize familiar faces, allowing you to filter alerts for known family members versus strangers.
License Plate Recognition (LPR): Use specialized modules within CodeProject.AI to read and log license plates locally without needing expensive cloud subscriptions.
Privacy-First AI: Because CodeProject.AI is self-hosted, all image analysis happens on your local hardware—no video data ever leaves your network for processing. Hardware Recommendations
To run Blue Iris and AI verification smoothly, your server needs sufficient power to process video frames in real-time:
Processor: 6th-generation Intel or higher (to utilize Quick Sync hardware acceleration). RAM: At least 16GB is recommended for stable performance.
Graphics (GPU): While not strictly required, an NVIDIA GPU can significantly speed up AI detection times and lower CPU usage.
Storage: A fast SSD for the operating system and Blue Iris database, paired with surveillance-grade HDDs for continuous video storage. Getting Started
Install Blue Iris: Download the Blue Iris V5 installer and set up your cameras.
Deploy CodeProject.AI: Download and install the CodeProject.AI Server (available as a Windows Service or Docker container).
Link the Systems: In Blue Iris under Settings > AI, point the software to your CodeProject.AI server address (typically localhost:32168).
Configure Filters: On each camera, enable "Confirm with AI" and list the objects you want to verify (e.g., person, car).
For more detailed technical guides, community members often share configurations on platforms like IP Cam Talk or the Blue Iris Reddit community. YouTube
Coral TPU Acceleration
For users on low-power PCs (like an Intel Celeron running Blue Iris), a Google Coral USB accelerator is a game-changer. CodeProject.AI now supports Coral. If "Verified" means "instantaneous" to you, switch the inference engine to Coral in the AI settings.
Development and Verification Process
-
Development Tools: The project could be developed using a range of tools and languages, depending on its goals. C++, Python, and JavaScript are popular choices for such applications.
-
Quality Assurance: The verification process likely involved some form of testing or review to ensure the project's integrity, performance, and security.
-
Community Feedback: On CodeProject, community engagement is key. Feedback from users, peers, and experts would play a significant role in the verification and continuous improvement of the project.
Final Recommendation
Do this setup if you have more than 2 cameras or want to stop useless alerts. The combination of Blue Iris + CodeProject.AI is one of the most powerful, privacy-focused (no cloud) security camera systems available. Start with the default model, then tune confidence levels per camera based on your environment (busy street vs private driveway).
Maximizing Home Security with CodeProject.AI and Blue Iris The integration of CodeProject.AI with Blue Iris has revolutionized home surveillance by bringing professional-grade local AI object detection to standard consumer hardware. In the context of a "verified" setup, this refers to a properly configured system where AI "verifies" motion alerts to ensure you only get notified for real events—like a person or vehicle—rather than false triggers like shadows or wind-blown branches. Why "Verified" Detection Matters
A standard motion sensor in Blue Iris triggers on any pixel change. A "verified" setup uses CodeProject.AI Server to analyze the trigger frame and confirm the presence of specific objects:
Filter False Positives: Drastically reduces alerts from rain, bugs, or lighting changes.
Specific Object Alerts: Get notified only for "person," "car," "dog," or even specific license plates.
Reduced CPU Load: By using high-resolution images only when motion is detected, you save significant processing power. Step-by-Step Configuration Guide 1. Installing CodeProject.AI
Download & Install: Grab the latest Windows installer from the CodeProject.AI GitHub.
Dashboard Access: Once installed, access the dashboard at http://localhost:32168 to ensure modules like Object Detection (YOLOv5 or YOLOv8) are running. 2. Blue Iris Global AI Settings To enable the bridge between the two programs: Open Blue Iris Settings (gear icon) > AI tab. Check Use AI server on IP/port (typically 127.0.0.1:32168). Ensure Default Object Detection is selected. 3. Verifying Camera-Specific Alerts
Each camera needs to be "verified" by the AI to filter its alerts: CodeProject : CodeProject is a well-known online community
Here are a few options for a post about "CodeProject Blue Iris Verified," depending on where you are posting (e.g., LinkedIn, a forum, or a blog).
Conclusion
The "CodeProject Blue Iris verified" project likely represents a significant achievement in software development, AI, or a related field. Without more specific information, it's difficult to provide a detailed analysis. However, projects like these contribute valuable resources and knowledge to the developer community, showcasing innovative solutions and expertise.
The combination of CodeProject.AI and Blue Iris is widely considered the gold standard for self-hosted, local computer vision in home security. It acts as a gatekeeper for your security cameras, verifying motion alerts by running them through artificial intelligence to ensure you only get notified for things that actually matter (like people, cars, or dogs) instead of shifting shadows or blowing leaves.
Here is a scannable review of the verified integration between CodeProject.AI and Blue Iris. ⚖️ The Verdict
CodeProject.AI is an absolute must-have if you use Blue Iris. It takes a legacy NVR software prone to endless false positives and turns it into a highly intelligent, modern surveillance powerhouse. However, the setup has a steep learning curve and requires robust local hardware to run efficiently. 🌟 The Pros
100% Local and Private: Zero cloud dependency. No images or videos ever leave your local network.
Drastic False-Positive Reduction: Differentiates between actual threats and environmental triggers.
Zero Monthly Fees: Both the integration and CodeProject.AI itself are completely free to use.
Versatile Custom Models: Go beyond basic detection. You can install custom modules for [License Plate Recognition (ALPR)](0.5.2, 0.5.10) and specific object training.
Excellent Hardware Support: Leverages standard CPUs, Nvidia GPUs (via CUDA), and budget-friendly Google Coral TPUs to speed up analysis times. 🛑 The Cons
High Resource Demands: Analyzing multiple 4K streams at once can easily max out older or low-spec central processing units.
Complex Configuration: Dialing in confidence thresholds, analyzing times, and substreams requires extensive trial and error.
Intermittent Bugs: Updates to either Blue Iris or CodeProject.AI can occasionally break the bridge connection or cause memory leaks. ⚙️ Performance & Setup Optimization
To ensure your Blue Iris verified AI setup runs smoothly, keep these highly recommended best practices in mind:
Use Substreams: Always feed CodeProject.AI your camera's low-resolution substream rather than the primary 4K or 1080p stream. It speeds up detection times massively without hurting accuracy.
Offload the Workload: If your main Blue Iris machine is struggling, you can easily offload CodeProject.AI to another server or a Docker container on a separate machine.
Leverage a GPU or Coral TPU: If you have more than a few active cameras, processing on a CPU will create bottleneck delays. Utilizing an entry-level Nvidia card or a Google Coral stick drops processing times from seconds to sub-100 milliseconds.
💡 Quick Anchor Point: If you are tired of your phone blowing up with alerts every time the wind blows, this free integration completely solves that problem.
To help you get this running efficiently on your specific hardware, let me know:
What processor and graphics card do you have in your Blue Iris machine? How many total cameras are you actively running?
What types of objects are you most interested in detecting (e.g., people, cars, custom faces, or license plates)? CodeProject.AI for Blue Iris - Installation and Setup
This write-up covers the integration of CodeProject.AI to create a "verified" alert system. This setup reduces false positives by ensuring alerts only trigger when the AI confirms specific objects like people, cars, or dogs. 🛠️ System Overview
The goal is a local, private security system that doesn't rely on the cloud. : The central hub that records video and detects motion. CodeProject.AI
: The "brain" that analyzes motion to verify what caused it. Verified Alerts
: Blue Iris only sends a notification if the AI sees an object you've specified. 🚀 Setup Steps 1. Install CodeProject.AI Download the latest version from the CodeProject.AI website Install it as a Windows Service so it starts automatically with your computer. Default Port : Ensure port is open (default). 2. Configure Blue Iris Global AI Blue Iris Settings Enable CodeProject.AI Enter the IP Select the modules you want (e.g., Object Detection (YOLOv5) Face Recognition for license plates). 3. Enable Verification per Camera Right-click a camera > Camera Settings Artificial Intelligence Confirm with AI , type the objects you want to verify (e.g., person, car, dog : Use "To confirm" to list objects that
be there, and "To cancel" for objects that should be ignored (like "trees" or "shadows"). 💡 Pro-Tips for "Verified" Accuracy High-Res Analysis
: In the AI settings, set "Analyze high-resolution images" to
for better detection at a distance, though this uses more CPU/GPU. GPU Acceleration : If you have an NVIDIA card, ensure the
module is installed in CodeProject.AI to offload work from your CPU. Clone Cameras
: Create a "clone" of a camera specifically for AI. Use the main camera for 24/7 recording and the clone for aggressive AI-verified alerts. Static Object Suppression
: Check "Ignore static objects" in the AI configuration to stop the AI from repeatedly alerting on a car already parked in your driveway. ⚠️ Troubleshooting Common Issues Connection Errors : If Blue Iris can't see the AI, verify that the CodeProject.AI Server service is running in Windows Task Manager. Slow Response : If alerts take too long, try the .NET modules
in CodeProject.AI instead of Python ones; they often run faster on Windows hardware. Breaking Updates : Before updating CodeProject.AI, always stop the Blue Iris service first to avoid database locks or installation errors. If you'd like to dive deeper, let me know: Do you have an NVIDIA GPU , or are you running this on Are you looking to set up Face Recognition or just general Object Detection Are you getting too many false positives right now that we need to tune out?
The integration of CodeProject.AI into Blue Iris transformed home surveillance from a system of constant false alarms—triggered by shadows and wind—into a high-precision security network. The Core Technology
Blue Iris is a powerful, Windows-based video management software (VMS) that handles live camera feeds and recording. Historically, it relied on simple pixel-change motion detection, which often led to "alert fatigue" from hundreds of irrelevant notifications.
The "verified" story began when Blue Iris integrated CodeProject.AI, a self-hosted, local AI server that replaced the older DeepStack engine. This "verification" process works as follows:
Motion Trigger: A camera detects motion (e.g., a tree swaying) and triggers Blue Iris.
AI Analysis: Instead of sending an alert immediately, Blue Iris sends a snapshot to the CodeProject.AI Server.
Verification: The AI server analyzes the image to "verify" if a specific object—like a person, vehicle, or animal—is actually present.
Confirmed Alert: Blue Iris only issues a notification if the AI confirms the target with a minimum confidence level (typically 50% or higher). Capabilities and Advanced Use Cases
Beyond basic person detection, the "verified" status enables several advanced security features: Blue Iris : Blue Iris could refer to
Guide to CodeProject.AI and Blue Iris Verified Integration Blue Iris has officially adopted CodeProject.AI as its primary engine for local, artificial intelligence-based object detection. This integration is "verified" in the sense that it is the manufacturer-recommended replacement for the older DeepStack AI system. Key Benefits of Integration
Zero Cloud Reliance: All image processing happens on your local hardware, ensuring privacy and speed.
Eliminate False Positives: Filters out alerts caused by wind, rain, shadows, or light changes by requiring "verification" of objects like people, cars, and animals.
Advanced Capabilities: Supports License Plate Recognition (LPR) and Facial Recognition locally without monthly fees.
Hardware Efficiency: Can offload intensive AI tasks to an NVIDIA GPU or a Coral AI chip to keep your CPU usage low. Step-by-Step Setup Guide 1. Install CodeProject.AI Server Download the latest installer from CodeProject.AI.
Install it as a Windows Service so it starts automatically with your PC.
Open the dashboard (default: http://localhost:32168) to verify the server is running. 2. Link Blue Iris to the AI Server Open Blue Iris Settings → AI tab.
Check Use AI server on IP/port (default is 127.0.0.1:32168). Select CodeProject.AI as the preferred method. (Optional) Enable Auto-start/stop with Blue Iris. 3. Configure Camera Verification CodeProject.AI for Blue Iris - Installation and Setup
Title: Unleashing the Power of CodeProject's Blue Iris: A Verified Approach to AI-Powered Security
Introduction
In the realm of artificial intelligence (AI) and computer vision, the integration of smart security systems has become increasingly prevalent. One such innovative solution is Blue Iris, a cutting-edge, AI-driven security platform that leverages the power of machine learning to enhance surveillance and threat detection. CodeProject, a renowned online community for developers, has been at the forefront of exploring and implementing Blue Iris's capabilities. This blog post delves into the verified approach of CodeProject's Blue Iris, shedding light on its features, benefits, and real-world applications.
What is Blue Iris?
Blue Iris is an AI-powered security platform that utilizes computer vision and machine learning algorithms to analyze video feeds from IP cameras. This enables the system to detect and recognize individuals, vehicles, and objects, providing advanced threat detection and alerting capabilities. By integrating with various IP cameras and supporting multiple protocols, Blue Iris offers a flexible and scalable solution for various security applications.
Verified Approach: CodeProject's Blue Iris
CodeProject's Blue Iris implementation takes a verified approach, ensuring the accuracy and reliability of the system. The platform's verification process involves:
- Camera Calibration: The system calibrates IP cameras to ensure accurate object detection and tracking.
- Object Detection: Blue Iris uses machine learning algorithms to detect objects, such as people, vehicles, and animals, within the camera's field of view.
- Facial Recognition: The platform integrates facial recognition capabilities, allowing for the identification of individuals.
- Alerting and Notification: Upon detecting a potential threat, Blue Iris sends alerts and notifications to designated authorities.
Key Features and Benefits
CodeProject's Blue Iris implementation offers several key features and benefits, including:
- Improved Security: Enhanced threat detection and alerting capabilities enable rapid response to potential security breaches.
- Increased Efficiency: Automated object detection and tracking reduce the need for manual monitoring, freeing up resources for more critical tasks.
- Scalability: Blue Iris supports multiple IP cameras and protocols, making it an ideal solution for large-scale security deployments.
- Customization: The platform allows for customization of detection rules, alerts, and notifications to suit specific security requirements.
Real-World Applications
The verified approach of CodeProject's Blue Iris has numerous real-world applications, including:
- Surveillance and Monitoring: Blue Iris is ideal for monitoring public spaces, such as parks, streets, and buildings.
- Industrial Security: The platform can be used to enhance security in industrial settings, such as factories, warehouses, and construction sites.
- Residential Security: Homeowners can benefit from Blue Iris's advanced threat detection and alerting capabilities.
Conclusion
CodeProject's Blue Iris implementation offers a verified approach to AI-powered security, providing a robust and reliable solution for various applications. By leveraging machine learning and computer vision, Blue Iris enhances threat detection and alerting capabilities, improving security and efficiency. As the demand for smart security solutions continues to grow, CodeProject's Blue Iris is poised to play a significant role in shaping the future of AI-powered security.
Resources
- CodeProject: Blue Iris: A Robust and Reliable AI-Powered Security Platform
- GitHub Repository: Blue Iris CodeProject Implementation
About the Author
[Your Name] is a [Your Profession/Student/Researcher] with a passion for exploring the intersection of technology and security. With a background in [Relevant Field], [Your Name] aims to provide insightful and informative content on the latest developments in AI-powered security solutions.
Here are a few drafts for a CodeProject.AI + Blue Iris verification post or documentation, depending on whether you are sharing a success story, asking for help, or writing a guide. Option 1: The "Success Story" (For Forums/Reddit)
Finally got CodeProject.AI and Blue Iris "Verified" – 100% Reliable Alerts!
Just wanted to share that I’ve finally dialed in my Blue Iris setup with CodeProject.AI. After some trial and error with the "Confirmed" and "Verified" status in the alerts, I’m seeing near-zero false positives.
Running CodeProject.AI on a Windows Docker container with CUDA support.
Tweaking the "Confidence" threshold to 60% and using the "Face" and "Person" models specifically.
The Blue Iris status bar now consistently shows "Verified" for real motion, and my phone isn't blowing up with tree shadows anymore. If anyone is struggling with the integration, check your
in the camera settings—make sure your object list matches what the server is actually looking for! Option 2: The Technical Guide (Documentation Style)
Integrating Blue Iris with CodeProject.AI for Verified Alerts To ensure your Blue Iris alerts are by AI before triggering a notification, follow these steps: Server Connection:
Ensure CodeProject.AI is running (default port 32168) and reachable by Blue Iris under Settings > AI Camera Configuration: Navigate to Camera Settings > Alert > Artificial Intelligence Object Confirmation: Input the specific objects you want verified (e.g., person, car, truck Verification Logic:
Blue Iris will now mark clips as "Confirmed" in the clip list once the AI server returns a match above your specified confidence interval. Troubleshooting:
If alerts aren't showing as verified, check the Blue Iris "Status" window under the "AI" tab to see real-time processing times and error codes. Option 3: The Troubleshooting Post (Seeking Help) Blue Iris not showing "Verified" status with CodeProject.AI
I’m having trouble getting my motion triggers to reach "Verified" status. I have CodeProject.AI installed and the service is running, but Blue Iris seems to be ignoring the AI analysis.
The clips show motion, but the "AI" column in the clip list is empty. What I've tried:
Restarting the AI service, checking the local IP address, and lowering confidence to 40%.
Does anyone have a screenshot of their "Verified" settings for a sub-stream setup? I think my timing or "Real-time images" count might be off. Which of these fits your goal best?
I can refine the technical details if you’re using a specific hardware accelerator (like a NVIDIA GPU