While recognizing some kinds of human motion patterns requires detailed feature representation and tracking, many of them can be recognized using global features. The global configuration or structure of an object in a frame can be expressed as a probability density function constructed using relational attributes between low-level features, e.g. edge pixels that are extracted from the regions of interest. The probability density changes with motion, tracing a trajectory in the latent space of distributions, which we call the configuration space. These trajectories can then be used for recognition using standard techniques such as dynamic time warping. Can these frame-wise probability functions, which usually have high dimensionality, be em...
Abstract—We consider two crucial problems in continuous sign language recognition from unaided video...
This paper presents a segment-based probabilistic approach to robustly recognize continuous sign lan...
A system for automatically training and spotting signs from continuous sign language sentences is pr...
While recognizing some kinds of human motion patterns requires detailed feature representation and t...
This thesis presents a framework for the automatic recognition of Sign Language sentences. In previo...
Sign language (SL) motion contains information about the identity of a signer, as does voice for a s...
This thesis presents a framework for the automatic recognition of Sign Language sentences. In previ...
The use of subunits offers a feasible way to recognize sign language with large vocabulary. The init...
Sign language communication includes not only lexical sign gestures but also grammatical processes w...
The visual processing of Sign Language (SL) videos offers multiple interdisciplinary challenges for ...
This work proposes to learn linguistically-derived sub-unit classifiers for sign language. The respo...
Abstract—To recognize speech, handwriting, or sign language, many hybrid approaches have been propos...
The common practice in sign language recognition is to first construct individual sign models, in te...
We present a framework for recognizing isolated and continuous American Sign Language (ASL) sentence...
Abstract — This paper proposes a framework based on the Hidden Markov Models (HMMs) benefited from t...
Abstract—We consider two crucial problems in continuous sign language recognition from unaided video...
This paper presents a segment-based probabilistic approach to robustly recognize continuous sign lan...
A system for automatically training and spotting signs from continuous sign language sentences is pr...
While recognizing some kinds of human motion patterns requires detailed feature representation and t...
This thesis presents a framework for the automatic recognition of Sign Language sentences. In previo...
Sign language (SL) motion contains information about the identity of a signer, as does voice for a s...
This thesis presents a framework for the automatic recognition of Sign Language sentences. In previ...
The use of subunits offers a feasible way to recognize sign language with large vocabulary. The init...
Sign language communication includes not only lexical sign gestures but also grammatical processes w...
The visual processing of Sign Language (SL) videos offers multiple interdisciplinary challenges for ...
This work proposes to learn linguistically-derived sub-unit classifiers for sign language. The respo...
Abstract—To recognize speech, handwriting, or sign language, many hybrid approaches have been propos...
The common practice in sign language recognition is to first construct individual sign models, in te...
We present a framework for recognizing isolated and continuous American Sign Language (ASL) sentence...
Abstract — This paper proposes a framework based on the Hidden Markov Models (HMMs) benefited from t...
Abstract—We consider two crucial problems in continuous sign language recognition from unaided video...
This paper presents a segment-based probabilistic approach to robustly recognize continuous sign lan...
A system for automatically training and spotting signs from continuous sign language sentences is pr...