We propose a novel deep learning approach to solve simultaneous alignment and recognition problems (referred to as “Sequence-to-sequence” learning). We decompose the problem into a series of specialised expert systems referred to as SubUNets. The spatio-temporal relationships between these SubUNets are then modelled to solve the task, while remaining trainable end-to-end. The approach mimics human learning and educational techniques, and has a number of significant advantages. SubUNets allow us to inject domain-specific expert knowledge into the system regarding suitable intermediate representations. They also allow us to implicitly perform transfer learning between different interrelated tasks, which also allows us to exploit ...
General sign language recognition models are only designed for recognizing categories, i.e., such mo...
1186-1194Sign language recognition systems are used for enabling communication between deaf-mute peo...
Sign language (SL) is a visual language that people with speech and hearing disabilities use to comm...
This work examines the application of modern deep convolutional neural network architectures for cla...
Abstract Getting to know sign language is of great research importance as it affects the lives of d...
This work presents a new approach to learning a framebased classifier on weakly labelled sequence da...
Sign language is a visual-gestural language used by hearing impaired person, they modality the gestu...
Abstract—We consider two crucial problems in continuous sign language recognition from unaided video...
Despite the recent success of deep learning in continuous sign language recognition (CSLR), deep mod...
This thesis presents a framework for the automatic recognition of Sign Language sentences. In previo...
This thesis presents a framework for the automatic recognition of Sign Language sentences. In previ...
This work proposes to learn linguistically-derived sub-unit classifiers for sign language. The respo...
This work presents our recent advances in the field of automatic processing of sign language corpora...
The visual processing of Sign Language (SL) videos offers multiple interdisciplinary challenges for ...
Hand pose tracking is essential in sign languages. An automatic recognition of performed hand signs ...
General sign language recognition models are only designed for recognizing categories, i.e., such mo...
1186-1194Sign language recognition systems are used for enabling communication between deaf-mute peo...
Sign language (SL) is a visual language that people with speech and hearing disabilities use to comm...
This work examines the application of modern deep convolutional neural network architectures for cla...
Abstract Getting to know sign language is of great research importance as it affects the lives of d...
This work presents a new approach to learning a framebased classifier on weakly labelled sequence da...
Sign language is a visual-gestural language used by hearing impaired person, they modality the gestu...
Abstract—We consider two crucial problems in continuous sign language recognition from unaided video...
Despite the recent success of deep learning in continuous sign language recognition (CSLR), deep mod...
This thesis presents a framework for the automatic recognition of Sign Language sentences. In previo...
This thesis presents a framework for the automatic recognition of Sign Language sentences. In previ...
This work proposes to learn linguistically-derived sub-unit classifiers for sign language. The respo...
This work presents our recent advances in the field of automatic processing of sign language corpora...
The visual processing of Sign Language (SL) videos offers multiple interdisciplinary challenges for ...
Hand pose tracking is essential in sign languages. An automatic recognition of performed hand signs ...
General sign language recognition models are only designed for recognizing categories, i.e., such mo...
1186-1194Sign language recognition systems are used for enabling communication between deaf-mute peo...
Sign language (SL) is a visual language that people with speech and hearing disabilities use to comm...