Image Recognition Algorithm Based on Information Fusion Combining Sparsity and Synergy

Dingsheng Deng
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引用次数: 1

Abstract

With the rapid development of information science and technology, image recognition technology plays an increasingly important role in the field of information security. However, in practical application, image recognition is easily affected by factors such as illumination, occlusion, background and other non-ideal conditions, so it is of great practical significance to seek robust image recognition technology. Sparse representation and collaborative representation can capture the essential features of face image, and obtain better recognition effect in image recognition. Therefore, this paper proposes an image recognition algorithm based on information fusion of sparsity and synergy. Experiments are carried out on the problems of collaborative representation classification and single sample image recognition. Experimental results show that, compared with sparse representation classification, collaborative representation classification achieves higher classification accuracy. When part of the pixel value image is occluded by 10%, the recognition rate of sparse representation algorithm is 99.1%, and the recognition rate is very good. Both algorithms have achieved very good recognition results in image recognition. Experiments show that sparse representation algorithm and collaborative representation algorithm improve the recognition rate of images.
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基于稀疏与协同相结合的信息融合图像识别算法
随着信息科学技术的飞速发展,图像识别技术在信息安全领域发挥着越来越重要的作用。但在实际应用中,图像识别容易受到光照、遮挡、背景等非理想条件的影响,因此寻求鲁棒性图像识别技术具有重要的现实意义。在图像识别中,稀疏表示和协同表示能够捕捉人脸图像的本质特征,获得较好的识别效果。为此,本文提出了一种基于稀疏性和协同性信息融合的图像识别算法。针对协同表示分类和单样本图像识别问题进行了实验研究。实验结果表明,与稀疏表示分类相比,协同表示分类具有更高的分类准确率。当部分像素值图像被遮挡10%时,稀疏表示算法的识别率为99.1%,识别率非常好。两种算法在图像识别中都取得了很好的识别效果。实验表明,稀疏表示算法和协同表示算法提高了图像的识别率。
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