We investigate the problem of recognizing words from video, fingerspelled using the British Sign Language (BSL) fingerspelling alphabet. This is a challenging task since the BSL alphabet involves both hands occluding each other, and contains signs which are ambiguous from the observer’s viewpoint. The main contributions of our work include: (i) recognition based on hand shape alone, not requiring motion cues; (ii) robust visual features for hand shape recognition; (iii) scalability to large lexicon recognition with no re-training. We report results on a dataset of 1,000 low quality web-cam videos of 100 words. The proposed method achieves a word recognition accuracy of 98.9%. 1
This work presents a generic approach to tackle continuous Sign Language Recognition (SLR) in ordina...
Recent progress in fine-grained gesture and action classification, and machine translation, point to...
The ability to recognize handshapes in signing video is essential in algorithms for sign recognition...
We investigate the problem of recognizing words from video, fingerspelled using the British Sign La...
The goal of this work is to detect and recognize sequences of letters signed using fingerspelling in...
International audienceThe goal of this work is to detect and recognize sequences of letters signed u...
We study the problem of recognizing video sequences of fingerspelled letters in American Sign Langua...
Although there have been some recent advances in sign language recognition, part of the problem is t...
Recent progress in fine-grained gesture and action classification, and machine translation, point to...
In this work, we will present several contributions towards automatic recognition of BSL signs from ...
American Sign Language (ASL) is notable for its unique grammatical structures such as classifiers an...
Recognition of gesture sequences is in general a very dif-ficult problem, but in certain domains the...
In recent years, gesture recognition has received much attention from research communities. Computer...
We study the recognition of fingerspelling sequences in American Sign Language from video using tand...
Sign language is designed to assist the deaf and hard of hearing community to convey messages and co...
This work presents a generic approach to tackle continuous Sign Language Recognition (SLR) in ordina...
Recent progress in fine-grained gesture and action classification, and machine translation, point to...
The ability to recognize handshapes in signing video is essential in algorithms for sign recognition...
We investigate the problem of recognizing words from video, fingerspelled using the British Sign La...
The goal of this work is to detect and recognize sequences of letters signed using fingerspelling in...
International audienceThe goal of this work is to detect and recognize sequences of letters signed u...
We study the problem of recognizing video sequences of fingerspelled letters in American Sign Langua...
Although there have been some recent advances in sign language recognition, part of the problem is t...
Recent progress in fine-grained gesture and action classification, and machine translation, point to...
In this work, we will present several contributions towards automatic recognition of BSL signs from ...
American Sign Language (ASL) is notable for its unique grammatical structures such as classifiers an...
Recognition of gesture sequences is in general a very dif-ficult problem, but in certain domains the...
In recent years, gesture recognition has received much attention from research communities. Computer...
We study the recognition of fingerspelling sequences in American Sign Language from video using tand...
Sign language is designed to assist the deaf and hard of hearing community to convey messages and co...
This work presents a generic approach to tackle continuous Sign Language Recognition (SLR) in ordina...
Recent progress in fine-grained gesture and action classification, and machine translation, point to...
The ability to recognize handshapes in signing video is essential in algorithms for sign recognition...