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Journal ArticleOpen Access

AutoRet: A Self-Supervised Spatial Recurrent Network for Content-Based Image Retrieval

Author Affiliations
King Abdulaziz University, Bangladesh University of Business and Technology, American International University-Bangladesh
Published InSensors
Year2022
Citations33

Abstract

Image retrieval techniques are becoming famous due to the vast availability of multimedia data. The present image retrieval system performs excellently on labeled data. However, often, data labeling becomes costly and sometimes impossible. Therefore, self-supervised and unsupervised learning strategies are currently becoming illustrious. Most of the self/unsupervised strategies are sensitive to the number of classes and can not mix labeled data on availability. In this paper, we introduce AutoRet, a deep convolutional neural network (DCNN) based self-supervised image retrieval system. The system is trained on pairwise constraints. Therefore, it can work in self-supervision and can also be trained on a partially labeled dataset. The overall strategy includes a DCNN that extracts embeddings from multiple patches of images. Further, the embeddings…
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