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Learning Multifunctional Binary Codes for Both Category and Attribute Oriented Retrieval Tasks

机译:学习面向类别和面向属性的检索任务的多功能二进制代码

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摘要

In this paper we propose a unified framework to address multiple realistic image retrieval tasks concerning both category and attributes. Considering the scale of modern datasets, hashing is favorable for its low complexity. However, most existing hashing methods are designed to preserve one single kind of similarity, thus incapable of dealing with the different tasks simultaneously. To overcome this limitation, we propose a new hashing method, named Dual Purpose Hashing (DPH), which jointly preserves the category and attribute similarities by exploiting the convolutional networks (CNN) to hierarchically capture the correlations between category and attributes. Since images with both category and attribute labels are scarce, our method is designed to take the abundant partially labelled images on the Internet as training inputs. With such a framework, the binary codes of new-coming images can be readily obtained by quantizing the network outputs of a binary-like layer, and the attributes can be recovered from the codes easily. Experiments on two large-scale datasets show that our dual purpose hash codes can achieve comparable or even better performance than those state-of-the-art methods specifically designed for each individual retrieval task, while being more compact than the compared methods.
机译:在本文中,我们提出了一个统一的框架来解决涉及类别和属性的多个现实图像检索任务。考虑到现代数据集的规模,散列因其低复杂度而有利。但是,大多数现有的散列方法被设计为保留一种相似性,因此无法同时处理不同的任务。为了克服此限制,我们提出了一种新的哈希方法,称为双重用途哈希(DPH),该方法通过利用卷积网络(CNN)来分层捕获类别和属性之间的相关性,从而共同保留类别和属性的相似性。由于带有类别和属性标签的图像都很稀少,因此我们的方法旨在将Internet上大量带有部分标签的图像用作训练输入。利用这样的框架,可以通过量化类二进制层的网络输出来容易地获得新出现的图像的二进制代码,并且可以容易地从这些代码中恢复属性。在两个大型数据集上进行的实验表明,与为每个单独的检索任务专门设计的那些最新方法相比,我们的双重目的哈希码可以实现可比甚至更好的性能,同时比已比较的方法更紧凑。

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