Plant Identification with Deep Convolutional Neural Network: SNUMedinfo at LifeCLEF Plant Identification Task 2015
نویسنده
چکیده
This paper describes our participation at the LifeCLEF Plant identification task 2015. Given various images of plant parts such as leaf, flower or stem, this task is about identification of plant species given multi-image observation query. We utilized GoogLeNet for individual image classification, and combined image classification results for plant identification per observation. Our approach achieved best performance in this task.
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