Publication | Open Access
Fabric Image Retrieval System Using Hierarchical Search Based on Deep Convolutional Neural Network
52
Citations
42
References
2019
Year
Fabric Image RetrievalImage ClassificationConvolutional Neural NetworkImage AnalysisMachine LearningMachine VisionEngineeringImage RetrievalPattern RecognitionDeep Learning FrameworkFabric AppearanceContent-based Image RetrievalImage SearchDeep LearningImage SimilarityComputer Vision
Fabric image retrieval is a meaningful issue, due to its potential values in many areas such as textile product design, e-commerce, and inventory management. Meanwhile, it is challenging because of the diversity of fabric appearance. Encourage by the recent breakthrough in the deep convolutional neural network (CNN), a deep learning framework is applied for fabric image retrieval. The idea of the proposed framework is that the binary code and feature for representing the image can be learning by a deep CNN when the data labels are available. The proposed framework employs a hierarchical search strategy that includes coarse-level retrieval and fine-level retrieval. Otherwise, a large-scale wool fabric image retrieval dataset named WFID with about 20 000 images are built to validate the proposed framework. The longitudinal comparison experiments for self-parameter optimization and horizontal comparison experiments for verifying the superiority of the algorithm are performed on this data set. The comparison experimental results indicate the superiority of the proposed framework.
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