软局部二进制模式

Ran Li, Xuezhen Li, Takio Kurita
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引用次数: 1

摘要

局部二值模式(LBP)是图像识别中最有效的局部描述符之一。它对图像单调的灰度变化具有不变性。对图像的每个像素采集局部邻域信息,并将其值与中心像素的值进行比较,生成二进制码。然后,通过计算不同二进制模式的出现次数,生成二进制代码的直方图。本文提出用软阈值函数代替原LBP中使用的硬阈值函数对原LBP进行扩展。然后根据提取的特征向量与二值向量之间的距离,通过投票计算权重来构建直方图。利用所提出的软LBP,我们可以提取中心像素值与相邻像素值之间的差异信息。这意味着纹理的细节可以包含在提取的特征中。为了验证所提出的软LBP算法的有效性,我们在人脸识别和人脸表情识别上进行了实验。结果表明,所提出的软LBP比原始LBP和相邻局部二值模式的共现具有更好的识别率,与软直方图LBP具有可比性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Soft local binary patterns
Local Binary Pattern (LBP) is known as one of the most effective local descriptors for image recognition. It is invariant to monotonic gray-scale changes of the image. Local neighborhood information is gathered for each pixel of the image, and a binary code is generated by comparing its value with the value of the center pixel. Then a histogram of binary code is created by counting up the occurrences of the different binary patterns. In this paper we propose an extension of the original LBP by using a soft thresholding function instead of the hard thresholding function using in the original LBP. Then we construct the histogram by voting the weights calculated depending on the distance between the extracted feature vector and the binary vectors. By using the proposed Soft LBP, we can extract information on the differences between the value of the center pixel and the value of the neighboring pixels. This means that the details of the textures can be included in the extracted features. To confirm the effectiveness of the proposed Soft LBP, we have performed the experiments on face recognition and face expression recognition. The results shows that the proposed Soft LBP gives better recognition rates than the original LBP and and the co-occurrence of adjacent local binary pattern and is comparable with the Soft Histogram LBP.
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