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Combining PCNN with color distribution entropy and vector gradient in feature extraction

机译:在特征提取中将PCNN与颜色分布熵和矢量梯度相结合

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摘要

In this paper, the simplified Pulse-Coupled Neural Network (PCNN) model, widely used in image processing, is used to extract image features for image retrieval. These features include PCNN-segmentation-based color information and PCNN-gradient-based texture. On one hand, considering the spatial distribution of colors, we combine the color distribution entropy with the simplified PCNN. On the other hand, we also make use of the texture features of images produced by gradient images. Experimental results show that our method performs better than Improved Color Distribution Entropy (ICDE), Block Difference of Inverse Probabilities (BDIP), PCNN-Global Icon (PCNN-GI) and Normalized Moment of Inertia (Nmi) method respectively for recall-precision and ANMRR index.
机译:在本文中,简化的脉冲耦合神经网络(PCNN)模型被广泛用于图像处理,用于提取图像特征以进行图像检索。这些功能包括基于PCNN细分的颜色信息和基于PCNN渐变的纹理。一方面,考虑到颜色的空间分布,我们将颜色分布熵与简化的PCNN相结合。另一方面,我们还利用了由梯度图像产生的图像的纹理特征。实验结果表明,对于召回精度和召回精度而言,我们的方法分别优于改进的颜色分布熵(ICDE),逆概率块差异(BDIP),PCNN全局图标(PCNN-GI)和归一化惯性矩(Nmi)方法。 ANMRR指数。

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