Robust feature descriptor and vehicle motion model with tracking-by-detection for active safety

Hirokatsu Kataoka, K. Tamura, Y. Aoki, Y. Matsui, K. Iwata, Y. Satoh
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引用次数: 1

Abstract

The percentage of pedestrian deaths in traffic accidents is on the rise in Japan. In recent years, there have been calls for measures to be introduced to protect vulnerable road users such as pedestrians and cyclists. In this study, a method to detect and track pedestrians using an in-vehicle camera is presented to perform braking controls, warn the driver, and develop improved safety systems for pedestrians. We improved the technology of detecting pedestrians using highly accurate images obtained with a monocular camera. We were able to predict pedestrian activity by monitoring the images, and developed an algorithm with which to recognize pedestrians and their movements more accurately. The effectiveness of the algorithm was tested using images taken on real roads. For the feature descriptor, we used an extended co-occurrence histogram of oriented gradients (ECoHOG) that accumulated the integration of gradient intensities. In the tracking step, we applied an effective motion model using optical flow and the proposed feature descriptor ECoHOG in a tracking-by-detection framework. These techniques were verified using images captured on the real road.
基于检测跟踪的鲁棒特征描述符和车辆运动模型
在日本,行人在交通事故中死亡的比例正在上升。近年来,一直有人呼吁采取措施保护行人和骑自行车的人等弱势道路使用者。在本研究中,提出了一种使用车载摄像头检测和跟踪行人的方法,以执行制动控制,警告驾驶员,并开发改进的行人安全系统。我们改进了使用单目摄像机获得的高精度图像来检测行人的技术。我们能够通过监控图像来预测行人的活动,并开发了一种算法来更准确地识别行人和他们的运动。通过在真实道路上拍摄的图像对算法的有效性进行了测试。对于特征描述符,我们使用了一个扩展的共现梯度直方图(ECoHOG)来累积梯度强度的积分。在跟踪步骤中,我们在检测跟踪框架中应用了基于光流的有效运动模型和所提出的特征描述符ECoHOG。这些技术通过在真实道路上拍摄的图像进行了验证。
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