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CCTV Management System

Introducing, an integrated management and control system for CCTV,designed to enhance operational efficiency through a more centralized and intuitive approach.

How our system works:

Acquiring

At this stage, the system collects raw data in the form of video footage from the connected CCTV camera network.

Organizing

The acquired data is then processed and categorized using AI technology. The integrated AI does more than just transmit information from edge devices—it is capable of detecting, identifying, and conducting self-training autonomously, ensuring higher accuracy in analysis.

Output

In the final stage, the system delivers refined output that has undergone multiple processing steps, rather than simply forwarding raw input from edge devices. Users also benefit from AI-driven automation features such as auto object tracking, auto object sorting, and object justification, improving surveillance efficiency.

Our main features:

Viewing And Managing Stream

The Stream Management feature allows users to dynamically add or remove active video streams for real-time monitoring.

This functionality provides flexible stream control, enabling users to focus on relevant surveillance feeds based on operational needs.

Functionalities:

Add Stream
  • Users can select a CCTV location from the available list.

  • The chosen stream is added to the monitoring interface for real-time viewing.

Remove Stream

Viewing Event Data

This feature allows users to track specific detected parameters, recognize patterns, and support data-driven decision-making.
With flexible data filtering options, users can focus on specific time periods to gain deeper insights and make informed decisions.

Features:

Customizable Chart Representation
Date Range Selection
Data Comparison
Interactive Data Exploration

Training Process

This feature ensures streamlined training management, allowing users to monitor progress, adjust parameters if needed, and select the best-performing model for further evaluation or deployment.

Functionalities:

Select Project and Start Training

Training Control

Training Output & Performance Metrics

Testing Model

This structured approach ensures a comprehensive evaluation of the model’s ability to detect and classify specific objects, optimizing performance for deployment across various monitoring and data analysis systems.

This testing process involves:

Object Detection, Classification & Tracking

Playback

This feature ensures seamless access to past recordings, enabling users to efficiently analyze surveillance footage for investigations and incident reviews.

Functionalities:

Timestamp-Based History Log
Event-Based Playback Navigation

Device Monitoring and Management

The Device Monitoring and Management feature provides real-time tracking and control over system resources and operational status. This ensures optimal performance, early detection of potential issues, and efficient resource utilization.

The monitored parameters includes:

CPU Usage
Memory Usage
Media Server Status (On/Off)
Recorder Status (On/Off)
Interface Speed
Storage Monitoring

Browse Through Events

The CCTV Monitoring System enables users to browse, categorize, and analyze events detected through a video analytics-based system, ensuring efficient event analysis, allowing users to quickly retrieve, assess, and respond to critical incidents with data-driven decision-making.

Functionalities:

Event Browsing & Categorization
Metadata-Based Search & Filtering

Annotation

This feature enhances system accuracy by enabling real-time validation and correction, ensuring more reliable results in helmet detection and traffic safety monitoring.

Functionalities:

Manual Annotation & Correction
Data Accuracy Enhancement
Model Improvement & Retraining

Analyze Model

The Model Training Report provides a comprehensive analysis of the training process, covering key aspects such as model configuration, input data details, performance evaluation, and graphical insights into the model’s effectiveness.

Model Training Summary
Model Input Details
Model Performance Metrics
Best Model Performance
Realtime Loss Tracking
Image Performance Metrics

Adding Cameras to Training Platform

This feature allows users to configure and integrate cameras for data collection and model training. This process involves setting up essential parameters to ensure optimal dataset acquisition and model performance.

Configuration Inputs:

Label List

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