Improved local descriptor (ILD): a novel fusion method in face recognition.

Shekhar Karanwal
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Abstract

Literature suggests that by fusing multiple features there is immense improvement in the recognition rates as compared to the recognition rates of single descriptor. This motivate researchers to develop more and more fused descriptors by joining multiple features. Inspiring from the literature work, the proposed work launch novel local descriptor so-called Improved Local Descriptor (ILD), by joining features of 4 local descriptors. These are LBP, ELBP, MBP and LPQ. LBP captures local details. ELBP capture robust features in horizontal and vertical directions (elliptically) by using 3 × 5 and 5 × 3 patches. MBP minimizes image noise by median comparison to all the pixels and LPQ quantize the frequency components for obtaining feature size. These essential merits of 4 descriptors are encapsulated in one framework in the form of histogram feature. PCA is used further for compression and SVMs and NN are used for classification. Results on ORL, GT and Faces94 confirms strength of ILD, which beats separately implemented descriptors and various benchmark methods.

Abstract Image

Abstract Image

Abstract Image

改进的局部描述符(ILD):一种新的人脸识别融合方法。
文献表明,通过融合多个特征,与单个描述符的识别率相比,识别率有了巨大的提高。这促使研究人员通过连接多个特征来开发越来越多的融合描述符。受文献工作的启发,该工作通过结合4个局部描述符的特征,推出了新的局部描述符,即改进的局部描述符(ILD)。这些是LBP、ELBP、MBP和LPQ。LBP捕获本地详细信息。ELBP通过使用3 × 5和5 × 3个补丁。MBP通过与所有像素进行中值比较来最小化图像噪声,并且LPQ量化频率分量以获得特征大小。4个描述符的这些基本优点以直方图特征的形式封装在一个框架中。PCA被进一步用于压缩,SVM和NN被用于分类。ORL、GT和Faces94的结果证实了ILD的强度,它击败了单独实现的描述符和各种基准方法。
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