Unsupervised learning method for shape matching templates based on gradient saliency estimation

Sicong Li, Feng Zhu, Qingxiao Wu
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Abstract

In order to improve the accuracy and robustness of the shape-based matching algorithm in practical industrial vision applications, we proposed an unsupervised learning algorithm, which under a given initial shape, can capture more potential shape features of the target in the training set through a comprehensive estimation of both the saliency of gradient orientation and gradient amplitude, consequently, learn a better template for matching. The experiment shows that when the number of valid training images reaches about 30, the point number difference between the learned shape and the ideal shape does not exceed 8%. In a comparative experiment on matching precision and recall of four different shapes, we found that the data curves of the learned shape were almost identical to those of the ideal shape, which proves that the algorithm has effective self-learning ability and thus, can improve the performance of shape-based template matching.
基于梯度显著性估计的形状匹配模板无监督学习方法
为了提高基于形状的匹配算法在实际工业视觉应用中的准确性和鲁棒性,我们提出了一种无监督学习算法,该算法在给定初始形状下,通过综合估计梯度方向和梯度幅度的显著性,可以在训练集中捕获目标更多潜在的形状特征,从而学习到更好的匹配模板。实验表明,当有效训练图像数量达到30张左右时,学习到的形状与理想形状的点数差不超过8%。在四种不同形状的匹配精度和召回率对比实验中,我们发现学习到的形状的数据曲线与理想形状的数据曲线基本一致,证明了该算法具有有效的自学习能力,从而提高了基于形状的模板匹配的性能。
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