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Deep motion templates and extreme learning machine for sign language recognition

机译:用于行语识别的深度运动模板和极限学习机

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Sign language is a visual language used by persons with hearing and speech impairment to communicate through fingerspellings and body gestures. This paper proposes a framework for automatic sign language recognition without the need of hand segmentation. The proposed method first generates three different types of motion templates: motion history image, dynamic image and our proposed RGB motion image. These motion templates are used to fine-tune three ConvNets trained on ImageNet dataset. Fine-tuning avoids learning all the parameters from scratch, leading to faster network convergence even with a small number of training samples. For combining the output of three ConvNets, we propose a fusion technique based on Kernel-based extreme learning machine (KELM). The features extracted from the last fully connected layer of trained ConvNets are used to train three KELMs, and the final class label is predicted by averaging their scores. The proposed approach is validated on a number of publicly available sign language as well as human action recognition datasets, and state-of-the-art results are achieved. Finally, an Indian sign language dataset is also collected using a thermal camera. The experimental results obtained show that our ConvNet-based deep features along with proposed KELM-based fusion are robust for any type of human motion recognition.
机译:手语是通过手指瓣膜和身体手势进行交流和讲话障碍的人使用的视觉语言。本文提出了一种用于自动标志语言识别的框架,而无需手部分割。所提出的方法首先生成三种不同类型的运动模板:运动历史图像,动态图像和我们所提出的RGB运动图像。这些运动模板用于微调三个扫描在想象中数据集上培训的扫描仪。微调避免从头开始学习所有参数,即使使用少量训练样本,即使具有较少的网络融合。结合三个扫描集的输出,我们提出了一种基于内核的极端学习机(KELM)的融合技术。从最后一个完全连接的训练扫描层中提取的特征用于训练三个kelms,并且通过平均其分数来预测最终类标签。所提出的方法是关于许多公开的手语以及人类行动识别数据集的验证,实现了最先进的结果。最后,还使用热敏摄像头收集印度手语数据集。获得的实验结果表明,我们的ConvNet的深度特征以及所提出的基于KELM的融合对于任何类型的人类运动识别都是强大的。

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