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Motion analysis and classification with directional Gaussian derivatives in image sequences

机译:图像序列中定向高斯导数的运动分析和分类

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This work is intended to provide some ideas on the use of a Gaussianj-derivative model for visual perception, called the Hermite transform, to extract motion information from an image sequence. Gaussian-derivative operators have long been used in computer vision for features extraction and are relevant in visual system modeling. A directional energy is defined in terms of the l-D Hermite transform coefficients of local projections. Each projection is described by the Hermite transform, resulting in a directional derivative analysis of the input at a given spatiotemporal scale. We demonstrate that the l-D Hermite transform coefficients of local projections are readily computed as a linear mapping of the 3-D Hermite transfrom coefficients through some projecting functions. The directional response is used to detect spetiotemporal patterns that are l-D or 2-D. Practical consideration and experimetnal results are also of concern.
机译:这项工作旨在为使用高斯微分模型进行视觉感知(称为Hermite变换)从图像序列中提取运动信息提供一些想法。高斯微分算子早已用于计算机视觉中以进行特征提取,并且与视觉系统建模相关。定向能量是根据局部投影的1-D Hermite变换系数定义的。每个投影都由Hermite变换描述,从而在给定的时空范围内对输入进行方向导数分析。我们证明,局部投影的I-D Hermite变换系数很容易通过一些投影函数作为3-D Hermite变换系数的线性映射进行计算。定向响应用于检测1-D或2-D的颞颞模式。实际考虑和实验结果也值得关注。

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