Real-time attention-based embedded LSTM for dynamic sign language recognition on edge devices

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作者
Vaidehi Sharma
Abhishek Sharma
Sandeep Saini
机构
[1] LNMIIT,Electronics and Communication Engineering
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Sign language recognition (SLR); Indian sign language (ISL); Long short-term memory networks (LSTM); Gated recurrent unit (GRU);
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摘要
Sign language recognition attempts to recognize meaningful hand gesture movements and is a significant solution for intelligent communication across societies with speech and hearing impairments. Nevertheless, understanding dynamic sign language from video-based data remains a challenging task in hand gesture recognition. However, real-time gesture recognition on low-power edge devices with limited resources has become a topic of research interest. Therefore, this work presents a memory-efficient deep-learning pipeline for identifying dynamic sign language on embedded devices. Specifically, we recover hand posture information to obtain a more discriminative 3D key point representation. Further, these properties are employed as inputs for the proposed attention-based embedded long short-term memory networks. In addition, the Indian Sign Language dataset for calendar months is also proposed. The post-training quantization is performed to reduce the model’s size to improve resource consumption at the edge. The experimental results demonstrate that the developed system has a recognition rate of 99.7% and an inference time of 500 ms on a Raspberry Pi-4 in a real-time environment. Lastly, memory profiling is performed to evaluate the performance of the model on the hardware.
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