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Human body posture recognition with discrete cosine transform

机译:离散余弦变换的人体姿势识别

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This study proposes a technique to generate effective features to classify fundamental human body postures in image sequences such as standing, sitting on the chair, sitting on the floor, bending, and lying down. Truncated discrete cosine transform (DCT) is utilized to obtain features before performing truncated singular value decomposition (SVD). It has been shown that the truncated DCT disregards unnecessary values and thus makes features more simple and light, resulting in an improvement in classification speed. Moreover, this study verifies that the newly extracted features contribute to an increase in the accuracy of the human posture classification, and a definite decrease in distinction errors for bending and sitting postures.
机译:这项研究提出了一种生成有效特征的技术,该特征可以对人体的基本姿势按照图像序列进行分类,例如站立,坐在椅子上,坐在地板上,弯曲和躺下。截断离散余弦变换(DCT)用于在执行截断奇异值分解(SVD)之前获取特征。已经表明,截断的DCT忽略了不必要的值,从而使特征更加简单和轻巧,从而提高了分类速度。此外,这项研究验证了新提取的特征有助于提高人体姿势分类的准确性,并显着减少了弯腰和坐姿的识别误差。

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