Pedestrian recognition using feature extraction

Ching-Lung Su, Ya-Han Chang, Kai-Ping Chen, Jia-Hua Wu
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引用次数: 1

Abstract

Traffic accidents make car safety receive most attention in recent years. With the progress of image processing technology, the automotive safety equipment sets cameras on cars and conducts image processing with the images captured by the cameras, which provides drivers more traffic information. In the image-based active driving safety equipment, the pedestrian detection technology is important. Most previous works that used cameras to capture traffic images applied classifiers to train the pedestrian features and conduct multi-stage feature matching. In our proposed method, we apply the single-lens camera to capture images, and we use formulae as well as image processing to extract the pedestrian features of each body part, such as edge line detection and color grouping. As a result, we exclude the objects that are not pedestrians on the road and find the correct pedestrians. Regarding the performance, the proposed method saves the computation time for manual template selection and pedestrian feature training of classifiers, which meets the requirements of real-time processing. The proposed method also provides the benefits to change cameras without conducting the above procedure repeatedly and only adjusts according to the pedestrian size. The result shows that the average computation time of pedestrian detection speed of the proposed method achieves 82.43 fps on Intel Core i7 processor at 3.4 GHz, the detection rate is better than 88%, and the false positive rate is no more than 10%.
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基于特征提取的行人识别
近年来,交通事故使汽车安全成为人们最关注的问题。随着图像处理技术的进步,汽车安全设备在汽车上设置摄像头,对摄像头拍摄到的图像进行图像处理,为驾驶员提供更多的交通信息。在基于图像的主动驾驶安全设备中,行人检测技术是非常重要的。以往使用摄像机采集交通图像的研究大多采用分类器对行人特征进行训练,并进行多阶段特征匹配。在我们提出的方法中,我们使用单镜头相机捕获图像,并使用公式和图像处理来提取每个身体部位的行人特征,如边缘线检测和颜色分组。因此,我们排除了道路上非行人的物体,找到了正确的行人。在性能方面,该方法节省了分类器人工选择模板和行人特征训练的计算时间,满足实时处理的要求。该方法还提供了更换摄像头的好处,无需重复执行上述程序,只需根据行人的大小进行调整。结果表明,该方法在Intel Core i7处理器3.4 GHz下行人检测速度的平均计算时间达到82.43 fps,检测率优于88%,误报率不大于10%。
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