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A Color Feature Learning and Robust Interpretation of Moving Object Using HMM

机译:使用HMM对运动对象进行颜色特征学习和鲁棒性解释

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摘要

Spot observation by computer vision is the one of fundamental key technology. In this paper, we propose a moving object color learning and robust recognition with Hidden Markov Model(HMM) from various scenes under different light conditions. Feature box which is a small area in a image is defined to observe a spot. The time series data of such as averages of R, G, B intensities in feature boxes are the input signals of our system. The HMMs learn correspondences of input signals with object color of moving object and background. Baum-Welch and Vi-terbi algorithms are used to learning and interpret the spot scene transition. In moving object color interpretation, the system selects a best HMM model for input signals using maximum likelihood method based on a given object color appearance grammar. In the experiment, we examine the number of feature boxes and its shapes under some light conditions. The feature boxes adjoining in vertical column whose height is almost same as objects results best score in the experiment. It shows the effectiveness of our method.
机译:计算机视觉现场观察是基本的关键技术之一。在本文中,我们提出了利用隐马尔可夫模型(HMM)在不同光照条件下从各种场景进行运动物体颜色学习和鲁棒识别的方法。定义了图像中较小区域的功能框以观察斑点。特征框中R,G,B强度平均值的时间序列数据是系统的输入信号。 HMM学习输入信号与运动物体和背景的物体颜色的对应关系。 Baum-Welch和Vi-terbi算法用于学习和解释现场场景转换。在运动物体颜色解释中,系统基于给定的物体颜色外观语法,使用最大似然法为输入信号选择最佳的HMM模型。在实验中,我们检查了某些光照条件下特征框的数量及其形状。在垂直列中相邻的特征框(其高度与对象几乎相同)在实验中得分最高。它显示了我们方法的有效性。

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