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Application of visual saliency and feature extraction algorithm applied in large-scale image classification

机译:视觉显着性和特征提取算法在大规模图像分类中的应用

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In recent years, content-based image retrieval method has attracted the attention of many researchers. With the emergence of large-scale computer vision data set, large-scale image classification is going to become an important challenge in the field of computer vision. The existing image classification algorithms mainly have the following defects: (1) lack of sufficient theoretical basis; (2) lower classification accuracy and larger error; (3) algorithm running time is too long because of large amount of data. In order to solve these problems, we introduce an algorithm based on visual saliency and feature extraction theory. Visual saliency means that intelligent algorithm can mark the significant areas in the picture through the simulation of human visual characteristics, and we can preliminarily screen the large-scale date set in terms of saliency extraction, in order to constitute an initial categories set. Image classification mainly includes three processes, that are feature extraction, computation of image pattern vector, classification. Feature extraction is the key factor that affects the performance of image classification. Comparing to global features of image with blur background, partial occlusion, and illumination changes, local features are mode adaptive. Traditional image classification algorithms only use single feature, thus these methods bring limitations. In this paper, we have a thorough research of image classification methods based on feature combination, and we also propose an algorithm based on multiple feature. At the same time, in order to solve the problem that traditional methods dealing with the whole image in a non-hierarchical way, we introduce the theory of visual saliency detection. The results obviously shows that efficient feature extraction combined with the theory of visual saliency are significant to image classification.
机译:近年来,基于内容的图像检索方法引起了许多研究者的关注。随着大规模计算机视觉数据集的出现,大规模图像分类将成为计算机视觉领域的重要挑战。现有的图像分类算法主要有以下缺陷:(1)缺乏足够的理论基础; (2)分类准确度较低,误差较大; (3)由于数据量大,算法运行时间过长。为了解决这些问题,我们介绍了一种基于视觉显着性和特征提取理论的算法。视觉显着性意味着智能算法可以通过模拟人类的视觉特征来标记图片中的重要区域,并且我们可以根据显着性提取来初步筛选大型日期集,以构成初始类别集。图像分类主要包括特征提取,图像模式向量的计算,分类三个过程。特征提取是影响图像分类性能的关键因素。与背景模糊,部分遮挡和照明变化的图像的整体特征相比,局部特征具有模式适应性。传统的图像分类算法仅使用单一特征,因此这些方法带来了局限性。在本文中,我们对基于特征组合的图像分类方法进行了深入研究,并提出了一种基于多特征的算法。同时,为了解决传统方法非分层处理整个图像的问题,我们引入了视觉显着性检测理论。结果显然表明,有效的特征提取与视觉显着性理论相结合对图像分类具有重要意义。

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