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Rapid Image Retrieval with Binary Hash Codes Based on Deep Learning

机译:基于深度学习的二进制哈希代码快速图像检索

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With the ever-growing large-scale image data on the web, rapid image retrieval has become one of the hot spots in the multimedia field. And it is still very difficult to reliable image retrieval due to the complex image appearance variations. Inspired by the robustness of convolutional neural networks features, we propose an effective deep learning framework to generate compact similarity-preserving binary hash codes for rapid image retrieval. Our main idea is incorporating deep convolutional neural network (CNN) into hash functions to jointly learn feature representations and mappings from them to hash codes. In particular, our approach which learns hash codes and image representations takes pairs of images as training inputs. Meanwhile, an effective loss function is used to maximize the differentiability of the output space by encoding the supervised information from the input image pairs. We extensively evaluate the retrieval performance on two large-scale datasets CIFAR-10 and NUS-WIDE, and the evaluation shows that our method gives a better performance than traditional hashing learning methods in image retrieval.
机译:随着网络上不断增长的大规模图像数据,快速图像检索已成为多媒体字段中的热点之一。由于复杂的图像外观变化,它仍然非常难以可靠的图像检索。灵感来自卷积神经网络特征的鲁棒性,我们提出了一种有效的深度学习框架,以产生快速图像检索的紧凑相似性保存二进制哈希码。我们的主要思想是将深度卷积神经网络(CNN)纳入哈希函数,以共同学习将其与哈希代码的特征表示和映射。特别地,我们学习哈希代码和图像表示的方法将图像成对为训练输入。同时,有效损耗函数用于通过从输入图像对中编码监督信息来最大化输出空间的可分性。我们广泛地评估了两个大型数据集CiFar-10和Nus范围内的检索性能,评估表明,我们的方法比图像检索中的传统散列学习方法提供更好的性能。

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