Fresh food recognition using feature fusion

Advanced Technologies for Communications(2014)

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摘要
This paper presents a fresh food recognition system that utilizes the feature fusion extracted from food images captured from optical fibers embedded inside a chopping board. We exploit both local and global features including color, SURF and shape for image representation. In addition, we propose cost-based schemes for feature matching and the Borda count method for feature fusion. An experiment is conducted on our previous study's dataset, which consists of 1,800 images of 12 food ingredients for evaluating the proposed method. The results demonstrate that the overall recognition accuracies can be achieved 86% precision and 83% recall, which is significantly improved from our previous work on food recognition.
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关键词
feature extraction,food processing industry,image capture,image colour analysis,image fusion,image matching,image representation,production engineering computing,shape recognition,borda count method,surf,chopping board,color,cost-based scheme,feature fusion extraction,feature matching,food image,food ingredient,fresh food recognition system,optical fiber,recognition accuracy,shape,image segmentation,image recognition
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