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Fingerspelling Identification for Chinese Sign Language via AlexNet-Based Transfer Learning and Adam Optimizer

机译:基于AlexNet的转移学习和ADAM优化器的中文手语的手指识别

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As an important component of universal sign language and the basis of other sign language learning, finger sign language is of great significance. This paper proposed a novel fingerspelling identification method for Chinese Sign Language via AlexNet-based transfer learning and Adam optimizer, which tested four different configurations of transfer learning. Besides, in the experiment, Adam algorithm was compared with stochastic gradient descent with momentum (SGDM) and root mean square propagation (RMSProp) algorithms, and comparison of using data augmentation (DA) against not using DA was executed to pursue higher performance. Finally, the best accuracy of 91.48% and average accuracy of 89.48?±?1.16% were yielded by configuration M1 (replacing the last FCL8) with Adam algorithm and using 181x DA, which indicates that our method can identify Chinese finger sign language effectively and stably. Meanwhile, the proposed method is superior to other five state-of-the-art approaches.
机译:作为普遍标志语言的重要组成部分和其他手语学习的基础,手指标志语言具有重要意义。本文通过基于AlexNet的转移学习和ADAM优化器提出了一种用于中文手语的新型手指识别方法,该方法测试了四种不同的转移学习配置。此外,在实验中,将ADAM算法与动量(SGDM)和根均线传播(RMSPROP)算法进行比较,并且执行使用数据增强(DA)的比较不使用DA以追求更高的性能。最后,最佳精度为91.48%,平均精度为89.48?±1.16%通过配置M1(更换最后一个FCL8)和使用181xDa,表示我们的方法可以有效地识别中文手指手语。稳定地。同时,所提出的方法优于其他五种最先进的方法。

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