Literature DB >> 27168596

Multi-Modal Curriculum Learning for Semi-Supervised Image Classification.

Chen Gong, Dacheng Tao, Stephen J Maybank, Wei Liu, Guoliang Kang, Jie Yang.   

Abstract

Semi-supervised image classification aims to classify a large quantity of unlabeled images by typically harnessing scarce labeled images. Existing semi-supervised methods often suffer from inadequate classification accuracy when encountering difficult yet critical images, such as outliers, because they treat all unlabeled images equally and conduct classifications in an imperfectly ordered sequence. In this paper, we employ the curriculum learning methodology by investigating the difficulty of classifying every unlabeled image. The reliability and the discriminability of these unlabeled images are particularly investigated for evaluating their difficulty. As a result, an optimized image sequence is generated during the iterative propagations, and the unlabeled images are logically classified from simple to difficult. Furthermore, since images are usually characterized by multiple visual feature descriptors, we associate each kind of features with a teacher, and design a multi-modal curriculum learning (MMCL) strategy to integrate the information from different feature modalities. In each propagation, each teacher analyzes the difficulties of the currently unlabeled images from its own modality viewpoint. A consensus is subsequently reached among all the teachers, determining the currently simplest images (i.e., a curriculum), which are to be reliably classified by the multi-modal learner. This well-organized propagation process leveraging multiple teachers and one learner enables our MMCL to outperform five state-of-the-art methods on eight popular image data sets.

Year:  2016        PMID: 27168596     DOI: 10.1109/TIP.2016.2563981

Source DB:  PubMed          Journal:  IEEE Trans Image Process        ISSN: 1057-7149            Impact factor:   10.856


  2 in total

1.  Multi-Layer Multi-View Classification for Alzheimer's Disease Diagnosis.

Authors:  Changqing Zhang; Ehsan Adeli; Tao Zhou; Xiaobo Chen; Dinggang Shen
Journal:  Proc Conf AAAI Artif Intell       Date:  2018-02

2.  Pay attention to doctor-patient dialogues: Multi-modal knowledge graph attention image-text embedding for COVID-19 diagnosis.

Authors:  Wenbo Zheng; Lan Yan; Chao Gou; Zhi-Cheng Zhang; Jun Jason Zhang; Ming Hu; Fei-Yue Wang
Journal:  Inf Fusion       Date:  2021-06-01       Impact factor: 12.975

  2 in total

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