The human detection in images using the depth map

D. Tatarenkov, D. Podolsky
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引用次数: 3

Abstract

In today world the necessity for the autonomous mobile robots and vehicles is increasing. The safety autonomous moving demands the reliable and fast detection algorithms. The Histogram of Oriented Gradients (HOG) descriptors show significantly outperforms the existing feature sets for a human detection. Though the given method has a lot of type I errors. The amount of these errors can be decreased by using the object distance information. This paper presents a robust human detection method using pairs of color frame and depth map. During the experiment, we used color images and maps of depth received from the Kinect v2 visual sensor. During the first step in our detection experiment we processed the whole frame with the HOG descriptor and received regions of interest. Then on the second step we determined the approximate distance to this region and compare its value to the range of possible human height and width values on that distance. The experimental results show that the new proposed method of HOG and distance restriction combining provides lower false positive and increase the precision in comparison to the HOG method without using the depth map. It gives opportunities to train more sensitive classifiers, which can provide the higher recall values. Consequently, we can increase the safety moving of the autonomous mobile robots and vehicles.
利用深度图对图像中的人体进行检测
在当今世界,对自主移动机器人和车辆的需求日益增加。安全自主运动需要可靠、快速的检测算法。定向梯度直方图(HOG)描述符明显优于现有的人类检测特征集。虽然给出的方法有很多I类错误。这些误差的数量可以通过使用目标距离信息来减少。提出了一种基于彩色帧对和深度图的鲁棒人体检测方法。在实验中,我们使用了从Kinect v2视觉传感器接收到的彩色图像和深度图。在检测实验的第一步中,我们使用HOG描述符处理整个帧并接收感兴趣的区域。然后在第二步中,我们确定到该区域的近似距离,并将其值与该距离上可能的人类身高和宽度值的范围进行比较。实验结果表明,与不使用深度图的HOG方法相比,本文提出的HOG与距离限制相结合的方法具有更低的误报率和更高的精度。它为训练更敏感的分类器提供了机会,这可以提供更高的召回值。因此,我们可以提高自主移动机器人和车辆的安全移动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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