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Residual squeeze CNDS deep learning CNN model for very large scale places image recognition

机译:深度压缩CNDS深度学习CNN模型用于超大规模场所图像识别

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Deep convolutional neural network models have achieved great success in the recent years. However, the optimization of size and the time needed to train a deep network is a research area that needs much improvement. In this paper, we address the issue of speed and size by proposing a compressed convolutional neural network model namely Residual Squeeze CNDS. Proposed models compresses the earlier very successful Residual-CNDS network and further improves on following aspects: (1) small model size, (2) faster speed, (3) uses residual learning for faster convergence, better generalization, and solves the issue of degradation, (4) matches the recognition accuracy of the non-compressed model on the very large-scale grand challenge MIT Places 365-Standard scene dataset. In comparison to Residual-CNDS the proposed model is 87.64% smaller in size and 13.33% faster in the training time. This supports our claim that the proposed model inherits the best aspects of Residual-CNDS model and further improves upon it. Moreover, we present our attempt at a more disciplined approach to searching the design space for novel CNN architectures. In comparison to SQUEEZENET our proposed framework can be more easily adapted and fully integrated with the residual learning for compressing various other contemporary deep learning convolutional neural network models.
机译:近年来,深度卷积神经网络模型取得了巨大的成功。但是,优化大小和训练深度网络所需的时间是需要大量改进的研究领域。在本文中,我们通过提出一个压缩卷积神经网络模型,即残压CNDS,解决了速度和大小问题。提出的模型对早期非常成功的Residual-CNDS网络进行了压缩,并在以下几个方面进行了改进:(1)模型规模小;(2)速度更快;(3)使用残差学习实现更快的收敛性,更好的泛化能力,并解决了降级问题,(4)匹配超大型挑战MIT Places 365-Standard场景数据集上非压缩模型的识别精度。与Residual-CNDS相比,该模型的尺寸小87.64%,训练时间快13.33%。这支持了我们的观点,即所提出的模型继承了Residual-CNDS模型的最佳方面,并在此基础上进行了进一步的改进。此外,我们提出了一种尝试以更严格的方法来搜索新颖的CNN架构的设计空间的尝试。与SQUEEZENET相比,我们提出的框架可以更轻松地进行调整,并与残差学习完全集成,以压缩各种其他当代深度学习卷积神经网络模型。

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