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Synthetic Data Generation Technique In Signer-independent Sign Language Recognition

机译:独立于手号的手语识别中的合成数据生成技术

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The lack of training samples is an important problem in the field of sign language recognition. This paper presents a method of generating synthetic multi-stream samples so as to enlarge the training set of sign. The mean shift algorithm is able to obtain the directions of maximum increase and decrease in the density function, so it is used to control the direction and the intensity of synthetic data generation. The synthetic data generation proposed in this paper satisfies the need of the synthetic samples, which must include a large amount of effective information of unspecific signers. The proposed method is evaluated under different experimental conditions, such as the generating strategy, the capacity of the model, as well as the intensity and direction of the generating process. The results show that in most cases recognition accuracy is improved; and in some, even greatly improved.
机译:训练样本的缺乏是手语识别领域的重要问题。本文提出了一种合成多流样本的方法,以扩大符号的训练集。均值漂移算法能够获得密度函数最大增加和减少的方向,因此可用于控制合成数据生成的方向和强度。本文提出的合成数据生成满足了合成样本的需求,合成样本必须包含大量非特异性签名者的有效信息。所提出的方法是在不同的实验条件下进行评估的,例如生成策略,模型的容量以及生成过程的强度和方向。结果表明,在大多数情况下,识别精度得到了提高;甚至有很大的改善。

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