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An Efficient Technique for Size Reduction of Convolutional Neural Networks after Transfer Learning for Scene Recognition Tasks

机译:场景识别任务转移学习后卷积神经网络尺寸减小的有效技术

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摘要

A complex classification task as scene recognition is considered in the present research. Scene recognition tasks are successfully solved by the paradigm of transfer learning from pretrained convolutional neural networks, but a problem is that the eventual size of the network is huge despite a common scene recognition task has up to a few tens of scene categories. Thus, the goal is to ascertain possibility of a size reduction. The modelling recognition task is a small dataset of 4485 grayscale images broken into 15 image categories. The pretrained network is AlexNet dealing with much simpler image categories whose number is 1000, though. This network has two fully connected layers, which can be potentially reduced or deleted. A regular transfer learning network occupies about 202.6 MB performing at up to 92 % accuracy rate for the scene recognition. It is revealed that deleting the layers is not reasonable. The network size is reduced by setting a fewer number of filters in the 17~(th)and 20~(th)layers of the AlexNet-based networks using a dichotomy principle or similar. The best truncated network with 384 and 192 filters in those layers performs at 93.3 % accuracy rate, and its size is 21.63 MB.
机译:在本研究中考虑了作为场景识别的复杂分类任务。场景识别任务是通过预训练卷积神经网络的转移学习范例成功解决的,但问题是,尽管常见的场景识别任务最多包含数十个场景类别,但网络的最终规模仍然很大。因此,目标是确定尺寸减小的可能性。建模识别任务是将4485个灰度图像分为15个图像类别的小型数据集。预训练的网络是AlexNet,它处理的图像类别更为简单,其类别为1000。该网络具有两个完全连接的层,可以减少或删除它们。常规的转移学习网络占用大约202.6 MB,以高达92%的准确率进行场景识别。揭示了删除层是不合理的。通过使用二分原理或类似方法,在基于AlexNet的网络的第17层和第20层中设置较少的过滤器,可以减少网络大小。在这些层中具有384和192过滤器的最佳截断网络的准确率达到93.3%,其大小为21.63 MB。

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