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Improved color and intensity patch segmentation for human full-body and body-parts detection and tracking

机译:改进的颜色和强度斑块分割,可用于人体和身体部位的检测和跟踪

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This paper presents a new way for detection and tracking of human full-body and body-parts (head, torso, arms, and legs) with color and intensity patch segmentation. The original R, G, and B are transformed to H (hue), S (saturation), and V (value) domain, as well as to Y, I, and Q for the NTSC system. With the help of morphological image processing, the fusion of S, V, Y, I and Q segmentations are used for full-body detection, while the individual V, I and Q segmentations are used for body-parts detection. An adaptive thresholding scheme has been developed for dealing with body size changes, illumination condition changes, and cross camera parameter changes. Preliminary tests with the PETS 2014 datasets show that we can obtain high probability of detection (Pd=100%) and low probability of false alarm (Pfa=1.95%) for both full-body and body-parts. The reliable body-parts (e.g. head) detection allows us to continuously track the individual person even though the torsos and legs of several closely spaced persons are merged together, and accurate human head localization is critical for human ID (face recognition). Furthermore, the detected body-parts allow us to extract important local constellation features of the body-parts' positions and angles related to the centroid position of the full-body. These features are critical for human walk gating estimation (a biometric feature for walking pattern recognition), as well as for human pose (e.g. standing or falling down) estimation for potential abnormal behavior and accidental event detection.
机译:本文提出了一种通过颜色和强度斑块分割来检测和跟踪人体全身和身体部位(头部,躯干,手臂和腿部)的新方法。原始的R,G和B转换为H(色相),S(饱和度)和V(值)域,以及NTSC系统的Y,I和Q。在形态图像处理的帮助下,将S,V,Y,I和Q分割的融合用于全身检测,而将单独的V,I和Q分割用于身体部位检测。已经开发了一种自适应阈值方案来应对身体尺寸的变化,照明条件的变化以及跨相机参数的变化。对PETS 2014数据集的初步测试表明,对于全身和身体部位,我们都可以获得较高的检测概率(Pd = 100%)和较低的误报概率(Pfa = 1.95%)。可靠的身体部位(例如头部)检测使我们能够连续跟踪单个人,即使几个间隔较近的人的躯干和腿合并在一起,准确的人头定位对于人的ID(人脸识别)也至关重要。此外,检测到的身体部位使我们能够提取身体部位的重要局部星座特征以及与全身质心位置相关的角度。这些特征对于人的步行门控估计(用于步行模式识别的生物特征)以及人的姿势(例如站立或跌倒)估计对于潜在的异常行为和意外事件检测都是至关重要的。

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