Vehicle Speed Detection using Haar Cascade Classifier and Correlation Tracking

A. Siddiqua, Amena Saher, Sumera Sumera
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Abstract

Objectives: The aim of this study is to develop an efficient and cost-effective solution for predicting vehicle speeds using recorded video data. Methods: The proposed system employs a combination of image processing techniques and computer vision to calibrate cameras for traffic simulation, enabling the extraction of information on average vehicle speeds. It utilizes the Haar Cascade Classifier for object detection, followed by a correlation tracker for vehicle tracking. Speed estimation is achieved through the frame differencing method. The dataset comprises 90 minutes of recorded data from highway cameras, showcasing diverse traffic scenarios with various vehicle types (trucks, trailers, cars, buses, and bikes) at varying speeds. Predicted values are compared with ground truth data obtained from a GPS-equipped car, using Mean Absolute Error (MAE) as the evaluation metric. Findings: The algorithm's performance is evaluated, resulting in an average error rate of 1.72 km/h (2.07%). These findings are compared with state-of-the-art data. Novelty: This study introduces a novel system that combines the Haar Cascade Classifier, correlation tracker, and frame differencing method to track vehicle positions, incorporating bike detection into the analysis, and calculate their moving speeds. A relative analysis underscores the system's performance, emphasizing its effectiveness in real-world applications and demonstrating refinement in accuracy assessment. Keywords: Image processing, Vehicle speed estimation, Haar Cascade Classifier, Correlation tracker, Error rate calculation, Computer vision
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使用 Haar 级联分类器和相关性跟踪进行车辆速度检测
研究目的本研究旨在利用录制的视频数据,开发一种高效、经济的车速预测解决方案。方法:所提议的系统结合了图像处理技术和计算机视觉技术,用于校准交通模拟摄像机,从而提取平均车速信息。它利用 Haar 级联分类器进行物体检测,然后利用相关跟踪器进行车辆跟踪。速度估计通过帧差分法实现。数据集由高速公路摄像头记录的 90 分钟数据组成,展示了各种车辆类型(卡车、拖车、轿车、公交车和自行车)以不同速度行驶的各种交通场景。使用平均绝对误差(MAE)作为评估指标,将预测值与从装有 GPS 的汽车上获取的地面实况数据进行比较。结果:对算法的性能进行了评估,得出的平均误差率为 1.72 km/h(2.07%)。这些结果与最先进的数据进行了比较。新颖性:本研究介绍了一种新颖的系统,该系统结合了哈尔级联分类器、相关跟踪器和帧差分法来跟踪车辆位置,将自行车检测纳入分析,并计算其移动速度。相对分析强调了该系统的性能,强调了其在实际应用中的有效性,并展示了在准确性评估方面的改进。关键词图像处理 车速估计 哈尔级联分类器 相关跟踪器 误差率计算 计算机视觉
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