基于左右手辨识的卷积神经网络反向传播优化

Taifen Bao, Huimin Jiao, Su Gao, Jifei Cai, Yuansheng Qi
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引用次数: 0

摘要

目前,医用塑料手套在生产过程中都是手工分为左手和右手,效率很低。本文通过建立卷积神经网络图像识别模型,提出了一种自动化的方法来改善这种情况。分析了学习和训练的反向传播过程,采用不同激活层和不同损失函数的组合来优化权值。对于相同的学习时间,有两个评价指标。一个是训练集的识别精度结果,另一个是损失函数的收敛曲线和振荡幅度。最后讨论了组合的适应性,对提高左手和右手的识别精度起着重要的作用。
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Back Propagation Optimization of Convolutional Neural Network Based on the left and the right hands Identification
N owadays, medical plastic gloves are sorted into the left and the right hands manually with low efficiency during productive process. In this paper, an automated way is proposed to improve this situation through establishing a convolutional neural network model for image recognition. The back propagation process of learning and training is analyzed in order to optimize the weight by adopting the combination of different activation layers and different loss functions. For the same learning times, there are two evaluation indexes. One is the result of recognition accuracy in the training set, the other is the convergence curve and oscillation amplitude of the loss function. Finally, the adaptability of the combinations is discussed, which plays an important role in improving the recognition accuracy of the left and the right hand.
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