Using SVM for Efficient Detection of Human Motion

J. Grahn, H. Kjellstromg
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引用次数: 7

Abstract

This paper presents a method for detection of humans in video. Detection is here formulated as the problem of classifying the image patterns in a range of windows of different size in a video frame as "human" or "non-human". Computational efficiency is of core importance, which leads us to utilize fast methods for image preprocessing and classification. Linear spatio-temporal difference filters are used to represent motion information in the image. Patterns of spatio-temporal pixel difference is classified using SVM, a classification method proven efficient for problems with high dimensionality and highly non-linear feature spaces. Furthermore, a cascade architecture is employed, to make use of the fact that most windows are easy to classify, while a few are difficult. The detection method shows promising results when tested on images from street scenes with humans of varying sizes and clothing.
基于支持向量机的人体运动检测
本文提出了一种视频中人物的检测方法。在这里,检测被表述为将视频帧中不同大小窗口中的图像模式分类为“人类”或“非人类”的问题。计算效率是最重要的,这使得我们使用快速的方法进行图像预处理和分类。使用线性时空差分滤波器来表示图像中的运动信息。利用支持向量机(SVM)对时空像元差异模式进行分类,该方法在高维、高度非线性的特征空间中被证明是有效的。此外,采用了级联架构,以利用大多数窗口易于分类而少数窗口难以分类的事实。当对街道场景中不同身材和服装的人的图像进行测试时,这种检测方法显示出了令人满意的结果。
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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