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Novel object recognition based on hypothesis generation and verification

机译:基于假设生成和验证的新型目标识别

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In this paper, a novel two-stage object recognition algorithm is proposed. As an iterative line search optimization method, the mean shift technique is used for fast generalizing of a set of hypothesis. During the hypothesis generalization procedure, the weighted global shape context is integrated with weighted gray histogram to enhance object representation. As a measure for the discriminative power of probability distributions, the symmetric discrete KL divergence is adopted instead of Bhattacharyya coefficient. In order to handle the problem of negative weights for samples, a new weight regulation method is introduced. For the verification stage, a robust circular Gabor-based object matching algorithm using weighted Hausdorff distance is adopted to give final verification for the set of hypothesis.
机译:本文提出了一种新颖的两阶段目标识别算法。作为迭代线搜索优化方法,均值漂移技术用于快速推导一组假设。在假设概括过程中,将加权全局形状上下文与加权灰色直方图集成在一起以增强对象表示。作为对概率分布的判别力的度量,采用对称离散KL发散而不是Bhattacharyya系数。为了解决样品负重的问题,提出了一种新的重量调节方法。在验证阶段,采用了一种基于加权Gaus距离的鲁棒基于Gabor的圆形对象匹配算法,以对该假设集进行最终验证。

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