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首页> 外文期刊>Computing and informatics >DUAL-TREE COMPLEX WAVELET TRANSFORM BASED LOCAL BINARY PATTERN WEIGHTED HISTOGRAM METHOD FOR PALMPRINT RECOGNITION
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DUAL-TREE COMPLEX WAVELET TRANSFORM BASED LOCAL BINARY PATTERN WEIGHTED HISTOGRAM METHOD FOR PALMPRINT RECOGNITION

机译:基于双树复杂小波变换的局部二进制模式加权直方图的掌纹识别

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In the paper, we improve the Local Binary Pattern Histogram (LBPH) approach and combine it with Dual-Tree Complex Wavelet Transform (DT-CWT) to propose a Dual-Tree Complex Wavelet Transform based Local Binary Pattern Weighted Histogram (DT-CWT based LBPWH) method for palmprint representation and recognition. The approximate shift invariant property of the DT-CWT and its good directional selectively in 2D make it a very appealing choice for palmprint representation. LBPH is a powerful texture description method, which considers both shape and texture information to represent an image. To enhance the representation capability of LBPH, a weight set is computed and assigned to the finial feature histogram. Here we needn't construct a palmprint model by a train sample set, which is not like some methods based on subspace discriminant analysisrnor statistical learning. In the approach, a palmprint image is first decomposed into multiple subbands by using DT-CWT. After that, each subband in complex wavelet domain is divided into non-overlapping sub-regions. Then LBPHs are extracted from each sub-region in each subband, and lastly, all of LBPHs are weighted and concatenated into a single feature histogram to effectively represent the palm-print image. A Chi square distance is used to measure the similarity of different feature histograms and the finial recognition is performed by the nearest neighborhood classifier. A group of optimal parameters is chosen by 20 verification tests on our palmprint database. In addition, the recognition results on our palmprint database and the database from the Hong Kong Polytechnic University show the proposed method outperforms other methods.
机译:在本文中,我们改进了局部二值模式直方图(LBPH)方法,并将其与对偶树复数小波变换(DT-CWT)结合,提出了基于对偶树复数小波变换的局部二值模式加权直方图(DT-CWT LBPWH)方法进行掌纹表示和识别。 DT-CWT的近似位移不变性及其在2D中有选择性的良好方向性使其成为掌纹表示中非常吸引人的选择。 LBPH是一种功能强大的纹理描述方法,它同时考虑形状和纹理信息来表示图像。为了增强LBPH的表示能力,需要计算权重集并将其分配给最终特征直方图。这里,我们不需要通过训练样本集来构建掌纹模型,这与基于子空间判别分析或统计学习的某些方法不同。在该方法中,首先通过使用DT-CWT将掌纹图像分解为多个子带。之后,将复数小波域中的每个子带划分为非重叠子区域。然后,从每个子带中的每个子区域中提取LBPH,最后,对所有LBPH进行加权并连接到单个特征直方图中,以有效地表示掌纹图像。卡方距离用于测量不同特征直方图的相似性,并且最终识别由最近的邻域分类器执行。通过我们的掌纹数据库上的20个验证测试,选择了一组最佳参数。此外,在我们的掌纹数据库和香港理工大学数据库上的识别结果表明,该方法优于其他方法。

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