Multi-resolution local binary patterns for image classification

Wavelet Analysis and Pattern Recognition(2010)

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摘要
This paper presents a novel method to extract image features for image classification. The extracted feature named multi-resolution local binary pattern (MR-LBP) is based on the local binary pattern (LBP) feature. The MR-LBP feature is highly distinctive by making use of multi-resolution patterns to obtain more descriptive information. The experiments results demonstrate the proposed MR-LBP feature is robust to image rotation, illumination changes and image noises. We also describe a descriptor called MR-LBP descriptor to using the features for image classification. Through experiments, our proposed approach performs favorably compared with the most well-known SIFT descriptor in two benchmark dataset. What's more, the proposed descriptor is computation simpler than the SIFT descriptor.
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关键词
region description,local binary pattern,image resolution,image feature extraction,image rotation,image noise,multiresolution local binary patterns,benchmark dataset,feature extraction,image classification,sift descriptor,transforms,sift,pixel,histograms,wavelet analysis,image features
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