Intelligent ROI-Based Vehicle Counting Framework for Automated Traffic Monitoring
About
Accurate vehicle counting through video surveillance is crucial for efficient traffic management. However, achieving high counting accuracy while ensuring computational efficiency remains a challenge. To address this, we propose a fully automated, video-based vehicle counting framework designed to optimize both computational efficiency and counting accuracy. Our framework operates in two distinct phases: \textit{estimation} and \textit{prediction}. In the estimation phase, the optimal region of interest (ROI) is automatically determined using a novel combination of three models based on detection scores, tracking scores, and vehicle density. This adaptive approach ensures compatibility with any detection and tracking method, enhancing the framework's versatility. In the prediction phase, vehicle counting is efficiently performed within the estimated ROI. We evaluated our framework on benchmark datasets like UA-DETRAC, GRAM, CDnet 2014, and ATON. Results demonstrate exceptional accuracy, with most videos achieving 100\% accuracy, while also enhancing computational efficiency, making processing up to four times faster than full-frame processing. The framework outperforms existing techniques, especially in complex multi-road scenarios, demonstrating robustness and superior accuracy. These advancements make it a promising solution for real-time traffic monitoring.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Vehicle Counting | M-30 video sequence (4 lanes) | Accuracy100 | 6 | |
| Vehicle Counting | Highway video sequence 2 lanes | Accuracy100 | 6 | |
| Vehicle Counting | HighwayII 4 lanes | Accuracy100 | 5 | |
| Vehicle Counting | UA-DETRAC MVI_40192 | Counting Accuracy98.9 | 3 | |
| Vehicle Counting | UA-DETRAC MVI_63521 | Counting Accuracy100 | 2 | |
| Vehicle Counting | UA-DETRAC MVI_40963 | Counting Accuracy100 | 2 | |
| Vehicle Counting | UA-DETRAC MVI_40992 | Counting Accuracy100 | 1 |