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Weakly Supervised Deep Metric Learning for Community-Contributed Image Retrieval

机译:弱监督的深度度量学习,用于社区贡献的图像检索

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摘要

Recent years have witnessed the explosive growth of community-contributed images with rich context information, which is beneficial to the task of image retrieval. It can help us to learn a suitable metric to alleviate the semantic gap. In this paper, we propose a new distance metric learning algorithm, namely weakly-supervised deep metric learning (WDML), under the deep learning framework. It utilizes a progressive learning manner to discover knowledge by jointly exploiting the heterogeneous data structures from visual contents and user-provided tags of social images. The semantic structure in the textual space is expected to be well preserved while the problem of the noisy, incomplete or subjective tags is addressed by leveraging the visual structure in the original visual space. Besides, a sparse model with the mixed norm is imposed on the transformation matrix of the first layer in the deep architecture to compress the noisy or redundant visual features. The proposed problem is formulated as an optimization problem with a well-defined objective function and a simple yet efficient iterative algorithm is proposed to solve it. Extensive experiments on real-world social image datasets are conducted to verify the effectiveness of the proposed method for image retrieval. Encouraging experimental results are achieved compared with several representative metric learning methods.
机译:近年来,具有丰富上下文信息的社区贡献图像爆炸性增长,这有利于图像检索的任务。它可以帮助我们学习合适的度量标准以减轻语义鸿沟。在深度学习框架下,我们提出了一种新的距离度量学习算法,即弱监督深度度量学习(WDML)。通过联合利用视觉内容和用户提供的社交图像标签的异构数据结构,它采用渐进式学习方式来发现知识。通过利用原始视觉空间中的视觉结构解决了嘈杂,不完整或主观标签的问题,有望很好地保留文本空间中的语义结构。此外,将具有混合范数的稀疏模型强加于深度架构中第一层的转换矩阵上,以压缩嘈杂或多余的视觉特征。提出的问题被公式化为具有定义明确的目标函数的优化问题,并提出了一种简单而有效的迭代算法来解决该问题。在现实世界中的社会图像数据集上进行了广泛的实验,以验证所提出的图像检索方法的有效性。与几种代表性的度量学习方法相比,获得了令人鼓舞的实验结果。

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