Exploring depth information for head detection with depth images

Siyuan Chen, F. Brémond, H. Nguyen, Hugues Thomas
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引用次数: 11

Abstract

Head detection may be more demanding than face recognition and pedestrian detection in the scenarios where a face turns away or body parts are occluded in the view of a sensor, but locating people is needed. In this paper, we introduce an efficient head detection approach for single depth images at low computational expense. First, a novel head descriptor is developed and used to classify pixels as head or non-head. We use depth values to guide each window size, to eliminate false positives of head centers, and to cluster head pixels, which significantly reduce the computation costs of searching for appropriate parameters. High head detection performance was achieved in experiments - 90% accuracy for our dataset containing heads with different body postures, head poses, and distances to a Kinect2 sensor, and above 70% precision on a public dataset composed of a few daily activities, which is higher than using a head-shoulder detector with HOG feature for depth images.
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探索深度信息与深度图像头部检测
在面部转向或身体部位被传感器遮挡的情况下,头部检测可能比面部识别和行人检测要求更高,但需要定位人。在本文中,我们介绍了一种高效的低计算开销的单深度图像头部检测方法。首先,开发了一种新的头部描述符,并用于将像素分类为头部或非头部。我们使用深度值来指导每个窗口的大小,消除头部中心的误报,并对头部像素进行聚类,这大大减少了寻找合适参数的计算成本。在实验中实现了高的头部检测性能-我们的数据集包含不同身体姿势,头部姿势和与Kinect2传感器的距离的头部,准确率为90%,并且在由一些日常活动组成的公共数据集上精度超过70%,这比使用具有HOG特征的头肩检测器用于深度图像更高。
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