For the ZSL approach, a new semantic descriptor dedicated to BdSL is created and a split of the dataset into seen and unseen classes is proposed. The performance of the proposed system is evaluated for both types of Bangla sign representations as well as on a large dataset with 35,149 images from over 350 subjects, varying in terms of backgrounds, camera angle, light contrast, skin tone, hand size, and orientation. To find a probable solution to the shortcomings in the existing works, this paper proposes two approaches based on conventional transfer learning and contemporary Zero-shot learning (ZSL) for automatic BdSL alphabet recognition of both seen and unseen data. Though widely studied and explored by researchers in the past years, certain unaddressed issues like identifying unseen signs and both types of BdSL or lack of evaluation of the models in versatile environmental conditions demarcate the real-world implementation of the automatic recognition of BdSL. However, a standard automatic recognition system of Bangla sign language (BdSL) is still to be achieved. Bangla, being the fifth most spoken language in the world has its own distinct sign language with two methods (one-handed and two-handed) of representation.
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