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OBJECT RECOGNITION USING SHAPE GROWTH PATTERN

机译:物体识别使用形状生长模式

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摘要

This paper proposes a preprocessing stage to augment the bank of features that one can retrieve from binary images to help increase the accuracy of pattern recognition algorithms. To this end, by applying successive dilations to a given shape, we can capture a new dimension of its vital characteristics which we term hereafter: the shape growth pattern (SGP). This work investigates the feasibility of such a notion and also builds upon our prior work on structure preserving dilation using Delaunay triangulation. Experiments on two public data sets are conducted, including comparisons to existing algorithms. We deployed two renowned machine learning methods into the classification process (i.e., convolutional neural network -CNN- and random forests -RF-) since they perform well in pattern recognition tasks. The results show a clear improvement of the proposed approach's classification accuracy (especially for data sets with limited training samples) as well as robustness against noise when compared to existing methods.
机译:本文提出了一种预处理阶段来增加一个可以从二进制图像中取回的特征组,以帮助提高模式识别算法的准确性。为此,通过将连续扩张施加到给定的形状,我们可以捕获其重要特征的新维度,以后的任期:形状生长模式(SGP)。这项工作调查了这种概念的可行性,并在我们之前的工作中建立了使用Delaunay三角测量的结构保护扩张。进行两组公共数据集的实验,包括对现有算法的比较。我们将两个着名的机器学习方法部署到分类过程中(即,卷积神经网络-CNN-和随机森林-RF-),因为它们在模式识别任务中表现良好。结果表明,与现有方法相比,明确提高了所提出的方法的分类准确性(特别是对于具有有限训练样本的数据集)以及对噪声的鲁棒性。

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