Conceptual Framework for Enhancing a Wearabledevice That Converts Sound, Text and Image Intoautomatic Sign Language Recognizing System (aslr)
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چکیده
Current production of hearing aids meets lesser than global needs. Hearing aids and other assistive devices can be used to improve Deafness and hearing loss in people especially using sign language. However, expressing sign language is not known or understood by everyone. These possess serious drawbacks in communicating to and from the deaf. Thus, the paper is to propose a framework that will improvised wearable device for the deaf by using machine learning approach. This paper develops a conceptual framework for enhancing a wearable device that converts sound, text and images into automatic sign language recognition system. The proposed study is an initial step towards the full development and deployment of the wearable device. The device is aimed specifically for the physically challenged (deaf).
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تاریخ انتشار 2017