• DocumentCode
    3748746
  • Title

    HD-CNN: Hierarchical Deep Convolutional Neural Networks for Large Scale Visual Recognition

  • Author

    Zhicheng Yan;Hao Zhang;Robinson Piramuthu;Vignesh Jagadeesh;Dennis DeCoste;Wei Di;Yizhou Yu

  • fYear
    2015
  • Firstpage
    2740
  • Lastpage
    2748
  • Abstract
    In image classification, visual separability between different object categories is highly uneven, and some categories are more difficult to distinguish than others. Such difficult categories demand more dedicated classifiers. However, existing deep convolutional neural networks (CNN) are trained as flat N-way classifiers, and few efforts have been made to leverage the hierarchical structure of categories. In this paper, we introduce hierarchical deep CNNs (HD-CNNs) by embedding deep CNNs into a two-level category hierarchy. An HD-CNN separates easy classes using a coarse category classifier while distinguishing difficult classes using fine category classifiers. During HDCNN training, component-wise pretraining is followed by global fine-tuning with a multinomial logistic loss regularized by a coarse category consistency term. In addition, conditional executions of fine category classifiers and layer parameter compression make HD-CNNs scalable for largescale visual recognition. We achieve state-of-the-art results on both CIFAR100 and large-scale ImageNet 1000-class benchmark datasets. In our experiments, we build up three different two-level HD-CNNs, and they lower the top-1 error of the standard CNNs by 2:65%, 3:1%, and 1:1%.
  • Keywords
    "Training","Visualization","Feature extraction","Neural networks","Probabilistic logic","Training data","Computer architecture"
  • Publisher
    ieee
  • Conference_Titel
    Computer Vision (ICCV), 2015 IEEE International Conference on
  • Electronic_ISBN
    2380-7504
  • Type

    conf

  • DOI
    10.1109/ICCV.2015.314
  • Filename
    7410671