A Multi-instance Multi-label Learning Framework of Image Retrieval - Intelligent Information Processing VII (IIP 2014) Access content directly
Conference Papers Year : 2014

A Multi-instance Multi-label Learning Framework of Image Retrieval

Chaojun Wang
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Zhixin Li
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Canlong Zhang
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Abstract

Because multi-instance and multi-label learning can effectively deal with the problem of ambiguity when processing images. A multi-instance and multi-label learning method based on Content Based Image Retrieve ( CBIR) is proposed in this paper, and the image processing stage we use in image retrieval process is multi-instance and multi-label. We correspond the instances with category labels by using a package which contains the color and texture features of the image area. According to the user to select an image to generate positive sample packs and anti-packages, using multi-instance learning algorithms to learn, using the image retrieval and relevance feedback, the experimental results show that the algorithm is better than the other three algorithms to retrieve results and its retrieval efficiency is higher. According to the user to select an image to generate positive sample packs and anti-packages, using multi- instance learning algorithms to learn, using the image retrieval and relevance feedback. Compared with several algorithms, the experimental results show that the performance of our algorithm is better and its retrieval efficiency is higher.
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hal-01383338 , version 1 (18-10-2016)

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Chaojun Wang, Zhixin Li, Canlong Zhang. A Multi-instance Multi-label Learning Framework of Image Retrieval. 8th International Conference on Intelligent Information Processing (IIP), Oct 2014, Hangzhou, China. pp.239-248, ⟨10.1007/978-3-662-44980-6_27⟩. ⟨hal-01383338⟩
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