cs.AI updates on arXiv.org 07月02日 12:03
Developing Lightweight DNN Models With Limited Data For Real-Time Sign Language Recognition
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本文提出一种基于轻量级DNN的实时手语识别框架,解决数据稀缺、计算成本高和训练与推理环境帧率差异等问题,实现高精度手语识别。

arXiv:2507.00248v1 Announce Type: cross Abstract: We present a novel framework for real-time sign language recognition using lightweight DNNs trained on limited data. Our system addresses key challenges in sign language recognition, including data scarcity, high computational costs, and discrepancies in frame rates between training and inference environments. By encoding sign language specific parameters, such as handshape, palm orientation, movement, and location into vectorized inputs, and leveraging MediaPipe for landmark extraction, we achieve highly separable input data representations. Our DNN architecture, optimized for sub 10MB deployment, enables accurate classification of 343 signs with less than 10ms latency on edge devices. The data annotation platform 'slait data' facilitates structured labeling and vector extraction. Our model achieved 92% accuracy in isolated sign recognition and has been integrated into the 'slait ai' web application, where it demonstrates stable inference.

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手语识别 轻量级DNN 实时识别 数据标注
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