4.7 Article

Fine-Grained Vehicle Classification With Channel Max Pooling Modified CNNs

Journal

IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY
Volume 68, Issue 4, Pages 3224-3233

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TVT.2019.2899972

Keywords

Fine-grained; vehicle classification; convolutional neural network; channel pooling; feature extraction

Funding

  1. National Key RAMP
  2. D Program of China [2018YFC0807205]
  3. National Natural Science Foundation of China [61773071, 61563030]
  4. Beijing Nova Program [Z171100001117049]
  5. Beijing Nova Program Interdisciplinary Cooperation Project [Z181100006218137]
  6. National Science and Technology Major Program of theMinistry of Science and Technology [2018ZX03001031]
  7. Key Program of Beijing Municipal Natural Science Foundation [L172030]
  8. BUPT Excellent Ph.D. Students Foundation [XTCX201804, CX2019109]
  9. Natural Science Foundation of Gansu Province, China [17JR5RA125]
  10. Hong-liu Outstanding Youth Talents Foundation of Lanzhou University of Technology

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Convolutional neural networks (CNNs) have recently shown excellent performance on the task of fine-grained vehicle classification, where the motivation is to identify the fine-grained categories of the given vehicles. Generally speaking, the main motivation of the conventional back-propagation algorithm is to optimize the loss function. The algorithm itself does not guarantee if the extracted features are discriminative for the task of classification. Intuitively, if we can learn more discriminative features with a relatively small number of feature maps, the generalization ability of the CNNs will be significantly improved. Therefore, we propose a channel max pooling (CMP) scheme, where a new layer is inserted between the fully connected layers and the convolutional layers. The proposed CMP scheme divides the feature maps into to several sub-groups. Then, it compresses the feature maps within each sub-group into a new one. The compression is carried out by selecting the maximum value among the same locations from different feature maps. Moreover, the proposed CMP layer has the advantage that it can reduce the number of parameters via reducing the number of channels in the CNNs. Experimental results on two fine-grained vehicle datasets demonstrate that the CMP modified CNNs can improve the classification accuracies on the task of fine-grained vehicle classification while a massive amount of parameters are reduced. Moreover, it has competitive performance when comparing with the-state-of-the-art methods.

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