We present a new approach for isolated sign recognition, which combines a spatial-temporal Graph Convolution Network (GCN) architecture for modeling human skeleton keypoints with late fusion of both the forward and backward video streams, and we explore the use of curriculum learning. We employ a type of curriculum learning that dynamically estimates, during training, the order of difficulty of each input video for sign recognition; this involves learning a new family of data parameters that are dynamically updated during training. The research makes use of a large combined video dataset for American Sign Language (ASL), including data from both the American Sign Language Lexicon Video Dataset (ASLLVD) and the Word-Level American Sign Langu...
This paper presents a new large-scale signer independent dataset for Kazakh-Russian Sign Language (K...
The American Sign Language Lexicon Video Dataset (ASLLVD) consists of videos of>3,300 ASL signs i...
Vision-based sign language recognition aims at helping the deaf people to communicate with others. H...
To improve computer-based recognition from video of isolated signs from American Sign Language (ASL)...
The WLASL purports to be “the largest video dataset for Word-Level American Sign Language (ASL) reco...
We report on the high success rates of our new, scalable, computational approach for sign recognitio...
Sign languages have been studied by computer vision researchers for the last threedecades. One of th...
Many sign languages are bonafide natural languages with grammatical rules and lexicons, hence can be...
In American Sign Language (ASL) as well as other signed languages, different classes of signs (e.g.,...
In the field of multimodal communication, sign language is and continues to be, one of the most und...
In the age of speech and voice recognition technologies, sign language recognition is an essential p...
We introduce a new general framework for sign recognition from monocular video using limited quantit...
In this paper, we describe some of the current issues in computational sign language processing. Des...
American Sign Language (ASL) is a visual gestural language which is used by many people who are deaf...
The American Sign Language Lexicon Video Dataset (ASLLVD) consists of videos of >3,300 ASL signs in ...
This paper presents a new large-scale signer independent dataset for Kazakh-Russian Sign Language (K...
The American Sign Language Lexicon Video Dataset (ASLLVD) consists of videos of>3,300 ASL signs i...
Vision-based sign language recognition aims at helping the deaf people to communicate with others. H...
To improve computer-based recognition from video of isolated signs from American Sign Language (ASL)...
The WLASL purports to be “the largest video dataset for Word-Level American Sign Language (ASL) reco...
We report on the high success rates of our new, scalable, computational approach for sign recognitio...
Sign languages have been studied by computer vision researchers for the last threedecades. One of th...
Many sign languages are bonafide natural languages with grammatical rules and lexicons, hence can be...
In American Sign Language (ASL) as well as other signed languages, different classes of signs (e.g.,...
In the field of multimodal communication, sign language is and continues to be, one of the most und...
In the age of speech and voice recognition technologies, sign language recognition is an essential p...
We introduce a new general framework for sign recognition from monocular video using limited quantit...
In this paper, we describe some of the current issues in computational sign language processing. Des...
American Sign Language (ASL) is a visual gestural language which is used by many people who are deaf...
The American Sign Language Lexicon Video Dataset (ASLLVD) consists of videos of >3,300 ASL signs in ...
This paper presents a new large-scale signer independent dataset for Kazakh-Russian Sign Language (K...
The American Sign Language Lexicon Video Dataset (ASLLVD) consists of videos of>3,300 ASL signs i...
Vision-based sign language recognition aims at helping the deaf people to communicate with others. H...