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An Image Retrieval Method for Binary Images Based on DBN and Softmax Classifier

机译:基于DBN和Softmax分类器的二值图像检索方法

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摘要

Currently, the common methods for image retrieval are content-based, while the abilities of image feature representation of these methods are very limited. In this paper, a new image retrieval method for binary images based on Deep Belief Networks (DBN) and Softmax classifier is proposed, which classifies the image data-set into some categories with the DBN and Softmax classifier first, and then classifies the query image in the same way, and those images in the same category will be returned as the similar images of the query image. Unlike the existing image retrieval models, the new method aims to provide a more effective representation and extraction measure by simulating the architecture of human visual system, and it is not necessary to set the threshold manually for this method like most of the existing methods based on the hamming distance computation. Experimental results show that the proposed method can get better recall and precision than some existing methods, such as perceptual hash algorithm and shape-based algorithm.
机译:当前,用于图像检索的常用方法是基于内容的,而这些方法的图像特征表示的能力非常有限。提出了一种基于深度信念网络(DBN)和Softmax分类器的二值图像检索方法,该方法首先使用DBN和Softmax分类器对图像数据集进行分类,然后对查询图像进行分类。以相同的方式,相同类别中的那些图像将作为查询图像的相似图像返回。与现有的图像检索模型不同,该新方法旨在通过模拟人类视觉系统的体系结构提供更有效的表示和提取措施,并且无需像大多数现有的基于图像的方法那样手动为该方法设置阈值海明距离计算。实验结果表明,与感知哈希算法和基于形状的算法相比,该方法具有更好的查全率和查准率。

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