基于GMM的视频序列手部图像分割的比较分析

H. Ribeiro, A. Gonzaga
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引用次数: 55

摘要

本文介绍了基于视频序列的实时GMM(高斯混合法)背景相减算法在手部图像分割中的不同方法。在每张捕获的图像中,基于背景提取和肤色分割,将属于手的像素从背景中分离出来。采用一种时间自适应混合高斯函数来模拟每个像素颜色值的分布。对于输入图像,每个新的像素值都会被检查,根据标准差与平均值的距离来决定它是否与现有的高斯值之一匹配。更新最佳匹配分布参数,增加其权重。假设背景像素值方差小,权重大。这些匹配的像素被认为是前景,基于肤色阈值进行比较。手的位置和其他属性由帧跟踪。这使得我们能够从背景和运动中的其他物体中区分手部运动,并从运动中提取信息进行动态手势识别
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hand Image Segmentation in Video Sequence by GMM: a comparative analysis
This paper describes different approaches of realtime GMM (Gaussian mixture method) background subtraction algorithm using video sequences for hand image segmentation. In each captured image, the segmentation takes place where pixels belonging to the hands are separated from the background based on background extraction and skin-color segmentation. A time-adaptive mixture of Gaussians is used to model the distribution of each pixel color value. For an input image, every new pixel value is checked, deciding if it matches with one of the existing Gaussians based on the distance from the mean in terms of the standard deviation. The best matching distribution parameters are updated and its weight is increased. It is assumed that the values of the background pixels have low variance and large weight. These matched pixels, considered as foreground, are compared based on skin color thresholds. The hands position and other attributes are tracked by frame. That enables us to distinguish the hand movement from the background and other objects in movement, as well as to extract the information from the movement for dynamic hand gesture recognition
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