Authors
Fangyuan Lei, Xun Liu, Qingyun Dai, Bingo Wing-Kuen Ling
Publication date
2020/1
Journal
SN Applied Sciences
Volume
2
Issue
1
Pages
97
Publisher
Springer International Publishing
Description
Deep convolutional neural networks show great advantages in computer vision tasks, such as image classification and object detection. However, the networks have complex network structure which include a large number of layers such as convolutional layers and pooling layers. They greatly consume valuable computing and memory resources, and also hugely waste training time. Therefore, we propose a novel shallow convolutional neural network (SCNNB) to overcome the above limitations for image classification, which uses batch normalization techniques to accelerate training convergence and improve the accuracy. The SCNNB network has only 4 layers with small size of convolution kernels, which requires low time complexity and space complexity. In the experiments, we compare the SCNNB model with two variant models and the classical SCNN model on the two benchmark image datasets …
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