基于目标检测的ROI分割的有效手语学习

Sunmok Kim, Y. Ji, Ki-Baek Lee
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引用次数: 21

摘要

本文提出了一种新的手语学习方法,该方法通过目标检测网络对输入数据进行感兴趣区域分割预处理。作为输入,对二维图像帧进行采样并拼接成宽图像。从图像中,通过检测和提取手的区域来分割ROI,这是手语的关键信息。手部区域检测过程是用著名的目标检测网络实现的,你只看一次(YOLO),手语学习是用卷积神经网络(CNN)实现的。通过2D摄像头测试了12种手势。结果表明,与不进行ROI分割的方法相比,准确率提高了12%(从86%提高到98%),训练时间减少了50%以上。最重要的是,通过预先训练的手部特征,它可以轻松地添加更多的手势来学习。
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An Effective Sign Language Learning with Object Detection Based ROI Segmentation
This paper proposes a novel sign language learning method which employs region of interest (ROI) segmentation preprocessing of input data through an object detection network. As the input, 2D image frames are sampled and concatenated into a wide image. From the image, ROI is segmented by detecting and extracting the area of hands, crucial information in sign language. The hand area detection process is implemented with a well-known object detection network, you only look once (YOLO) and the sign language learning is implemented with a convolutional neural network (CNN). 12 sign gestures are tested through a 2D camera. The results show that, compared to the method without ROI segmentation, the accuracy is increased by 12% (from 86% to 98%) as well as the training time is reduced by over 50%. Above all, through the pretrained hand features, it has the advantage of ease in adding more sign gestures to learn.
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