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Incomplete Contour Representations and Shape Descriptors: ICR Test Studies

机译:不完整的轮廓表示和形状描述符:ICR测试研究

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摘要

Inspired by psychophysical studies of the human cognitive abilities we propose a novel aspect and a method for performance evaluation of contour based shape recognition algorithms regarding their robustness to incompleteness of contours. We use complete contour representations of objects as a reference (training) set. Incomplete contour representations of the same objects are used as a test set. The performance of an algorithm is reported using the recognition rate as a function of the percentage of contour retained. We call this evaluation procedure the ICR test. We consider three types of contour incompleteness, viz. segment-wise contour deletion, occlusion and random pixel depletion. We illustrate the test procedure using two shape recognition algorithms. These algorithms use a shape context and a distance multiset as local shape descriptors. Both algorithms qualitatively mimic human visual perception in the sense that the recognition performance monotonously increases with the degree of completeness and that they perform best in the case of random depletion and worst in the case of occluded contours. The distance multiset method performs better than the shape context method in this evaluation framework.
机译:受人类认知能力的心理物理学研究的启发,我们提出了一个新颖的方面和一种方法,用于评估基于轮廓的形状识别算法对轮廓不完整的鲁棒性。我们使用对象的完整轮廓表示作为参考(训练)集。相同对象的不完整轮廓表示用作测试集。使用识别率作为保留的轮廓百分比的函数来报告算法的性能。我们将此评估程序称为ICR测试。我们考虑轮廓不完整的三种类型,即。逐段轮廓删除,遮挡和随机像素耗尽。我们说明了使用两种形状识别算法的测试过程。这些算法使用形状上下文和距离多集作为局部形状描述符。两种算法在质量上都模仿了人类的视觉感知,即识别性能随完整性的程度单调提高,并且在随机消耗的情况下表现最佳,在轮廓被遮挡的情况下表现最差。在此评估框架中,距离多集方法的性能优于形状上下文方法。

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