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Robust Shape Retrieval Using Maximum Likelihood Theory

机译:基于最大似然理论的鲁棒形状检索

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摘要

The most commonly used shape similarity metrics are the sum of squared differences (SSD) and the sum of absolute differences (SAD). However, Maximum Likelihood (ML) theory allows us to relate the noise (differences between feature vectors) distribution more generally to a metric. In this paper, a shape is partitioned into tokens based on its concave regions, invariant moments are computed for each token, and token similarity is measured by a metric. Finally, a non-metric measure that employs heuristics is used to measure the shape similarity. The desirable property of this scheme is to mimic the human perception of shapes. We show that the ML metric outperforms the SSD and SAD metrics for token matching. Instead of the ML metric based on histograms for PDF approximation, which suffer from being sensitive to choices of bin width, we propose a Parzen windows method that is continuous and more robust.
机译:最常用的形状相似性度量是平方差之和(SSD)和绝对差之和(SAD)。但是,最大似然(ML)理论使我们可以将噪声(特征向量之间的差异)分布更一般地与度量相关联。在本文中,根据形状的凹面将形状划分为令牌,为每个令牌计算不变矩,并通过度量标准来衡量令牌相似度。最后,采用启发式的非度量度量用于度量形状相似性。该方案的理想特性是模仿人类对形状的感知。我们显示,对于令牌匹配,ML指标优于SSD和SAD指标。代替基于直方图的ML度量(PDF逼近对箱宽的选择敏感),我们提出了一种连续且更鲁棒的Parzen窗方法。

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