基于色域梯度和局部相位的形状特征融合

Hussin K. Ragb, V. Asari
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引用次数: 0

摘要

本文提出了一种新的基于形状特征的人体检测描述符。基于图像梯度和颜色空间中的局部相位提取形状特征。这些互补信息的融合可以捕获广泛的人体外观细节,从而提高检测精度。所提出的特征是通过计算三色通道的相位一致性以及图像中每个像素相对于其邻域的梯度幅度和方向来形成的。从相应的颜色通道中只选择最大的相位一致性值。确定了图像局部区域的定向相位直方图和定向梯度直方图。将这些直方图连接起来构建所提出的描述符,并将其命名为颜色空间中的融合梯度和局部相位(FGPC)。进行了几个实验来测试和评估所提出的描述符的检测性能。采用线性支持向量机分类器对行人进行训练。实验结果表明,基于所提特征的人体检测系统相对于一组最先进的特征提取方法具有更低的错误率和更好的检测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fused shape features based on gradient and local phase in color domain
In this paper we present a new descriptor based on shape features for human detection. The shape features are extracted based on both, the image gradients, and the local phase in color space. The fusing of these complementary information yields to capture a broad range of the human appearance details that improves the detection accuracy. The proposed features are formed by computing the phase congruency of the three-color channels in addition to the gradient magnitude and orientation for each pixel in the image with respect to its neighborhood. Only the maximum phase congruency values are selected from the corresponding color channels. The histogram of oriented phase and the histogram of oriented gradients for the local regions of the image, are determined. These histograms are concatenated to construct the proposed descriptor and it is named as Fused Gradients and local Phase in Color space (FGPC). Several experiments were performed to test and evaluate the detection performance of the proposed descriptor. A linear support vector machine (SVM) classifier is used to train the pedestrians. The experimental results show that the human detection system based on the proposed features has less error rates and better detection performance over a set of state of the art feature extraction methodologies.
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