A Study of Sub-Pattern Approach in 2D Shape Recognition Using the PCA and Ridgelet PCA

Muzameel Ahmed, Manjunath Aradhya
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引用次数: 27

Abstract

In the area of computer vision and machine intelligence, image recognition is a prominent field. There have been several approaches in use for 2D shape recognition using shape features extraction. This paper suggest, subspace method approach. Normally in the earlier methods proposed so far, an entire image is considered in the training and matching operation, with sub pattern approach a given image is partitioned in to many sub images. The recognition process is carried out in two steps, in the first step the Ridgelet transform is used to feature extraction, in the second step PCA is used for dimensionality reduction. For recognition efficiency rate a test study is conducted by using seventeen different distance measure technique. The training and testing process is conducted using leave-one-out strategy. The proposed method is tested on the standard MPEG-7 dataset. The results of Ridgelet PCA are compared with PCA results.
基于主成分分析和脊波主成分分析的二维形状识别子模式方法研究
在计算机视觉和机器智能领域,图像识别是一个突出的领域。目前已有几种基于形状特征提取的二维形状识别方法。本文提出了子空间方法。在目前提出的方法中,通常在训练和匹配操作中考虑整个图像,而在子模式方法中,将给定图像分割成许多子图像。识别过程分两步进行,第一步使用脊波变换进行特征提取,第二步使用主成分分析进行降维。为了提高识别效率,采用17种不同的距离测量技术进行了测试研究。培训和测试过程采用留一策略进行。在标准MPEG-7数据集上对该方法进行了测试。将Ridgelet主成分分析结果与主成分分析结果进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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