Faster R-CNN based food image retrieval and classification
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    Abstract:

    Automatic understanding of food images has various applications in different fields,such as food intake monitor and food calorie estimation.Thus,the research on food related tasks,such as food image retrieval and classification has been one of the hot research topics in the field of multimedia analysis and applications recently.Existing methods mainly extract the visual features from the whole food image for further food analysis.The extracted features are lacking in robustness because of the background interference from the images.In order to solve this problem,we propose a Faster R-CNN (Region-based Convolutional Neural Network) based food retrieval and classification method.For the solution,we first detect the food candidate regions using Faster R-CNN,and then adopt the CNN network to extract the visual features from the detected food regions.Such extracted features are more discriminative for reducing the background interference.Furthermore,we select the annotated food images from the Visual Genome dataset to fine-tune the Faster R-CNN to guarantee its performance.We conduct the experiment on two datasets:Food-101 with 101 classes and 10 641 food images,and Dish-233 with 233 dishes and 49 168 images.The extensive evaluation demonstrates the effectiveness of the proposed Faster R-CNN based food visual feature extraction method in food image retrieval and classification.

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MEI Shuhuan, MIN Weiqing, LIU Linhu, DUAN Hua, JIANG Shuqiang. Faster R-CNN based food image retrieval and classification[J]. Journal of Nanjing University of Information Science & Technology,2017,9(6):635-641

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  • Received:July 28,2017
  • Online: November 25,2017
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