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FSboard: Over 3 million characters of ASL fingerspelling collected via smartphones

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arxiv 2407.15806 v1 pith:EAX7IJQG submitted 2024-07-22 cs.CV cs.CL

FSboard: Over 3 million characters of ASL fingerspelling collected via smartphones

classification cs.CV cs.CL
keywords fingerspellingfsboardsignsignerscharacterscollecteddatasetdeaf
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Progress in machine understanding of sign languages has been slow and hampered by limited data. In this paper, we present FSboard, an American Sign Language fingerspelling dataset situated in a mobile text entry use case, collected from 147 paid and consenting Deaf signers using Pixel 4A selfie cameras in a variety of environments. Fingerspelling recognition is an incomplete solution that is only one small part of sign language translation, but it could provide some immediate benefit to Deaf/Hard of Hearing signers as more broadly capable technology develops. At >3 million characters in length and >250 hours in duration, FSboard is the largest fingerspelling recognition dataset to date by a factor of >10x. As a simple baseline, we finetune 30 Hz MediaPipe Holistic landmark inputs into ByT5-Small and achieve 11.1% Character Error Rate (CER) on a test set with unique phrases and signers. This quality degrades gracefully when decreasing frame rate and excluding face/body landmarks: plausible optimizations to help models run on device in real time.

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