暹罗神经网络在不同激活函数下的人脸识别性能

Amira Anisa Rahman Putra, S. Setumin
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引用次数: 9

摘要

最先进的图像识别方法趋向于实现高性能。然而,它需要大量的数据集,这使得在有新发现的样本的情况下用足够的样本训练机器学习模型是不可行的。另一方面,单次学习可以用有限的样本进行训练。除此之外,单次学习也可以训练,每个人只有一个样本。其中一种著名的方法是使用暹罗神经网络。Siamese网络的工作原理是,使用两个相同的网络来处理不同的图像,并在计算两幅图像之间的相似度分数的同时学习两个特征向量之间的绝对差异。然而,这个任务的最佳激活函数不知何故是未知的。因此,本文尝试使用不同的激活函数来评估Siamese神经网络在人脸识别中的性能。结果表明,sigmoid激活函数是最合适的激活函数,其对N-way Siamese Neural Network的平均准确率为92%。
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The Performance of Siamese Neural Network for Face Recognition using Different Activation Functions
The state-of-the-art method for image identification tends to achieve high performance. However, it requires a vast set of datasets making it infeasible to train machine learning models with sufficient samples while having newly-found samples. On the other hand, one-shot learning can be trained with limited samples. In addition to that, one-shot learning can also be trained with only one sample per person. One of the renowned methods is by using Siamese Neural Network. A Siamese network operates by having two identical networks with different images and learn the absolute difference between the two feature vectors while calculating the similarity score between the two images. However, the best activation function for this task is somehow unknown. Therefore, this paper attempts to evaluate the performance of Siamese Neural Network for face recognition using different activation functions. From the results, the most suitable activation function with the most stable performance is sigmoid, with an average accuracy of 92% for N-way Siamese Neural Network.
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