This paper introduces a multi-class hand gesture recognition model developed to identify a set of hand gesture sequences from two-dimensional RGB video recordings, using both the appearance and spatiotemporal parameters of consecutive frames. The classifier utilizes a convolutional-based network combined with a long-short-term memory unit. To leverage the need for a large-scale dataset, the model deploys training on a public dataset, adopting a technique known as transfer learning to fine-tune the architecture on the hand gestures of relevance. Validation curves performed over a batch size of 64 indicate an accuracy of 93.95% (±0.37) with a mean Jaccard index of 0.812 (±0.105) for 22 participants. The fine-tuned architecture illustrates the...
The ChaLearn large-scale gesture recognition challenge has run twice in two workshops in conjunction...
Gesture recognition aims at understanding the ongoing human gestures. In this paper, we present a de...
In this paper, we propose using 3D Convolutional Neural Networks for large scale user-independent co...
This paper introduces a multi-class hand gesture recognition model developed to identify a set of ha...
Low latency detection of human-machine interactions is an important problem. This work proposes fast...
Continuous gesture recognition aims at recognizing the ongoing gestures from continuous gesture sequ...
Recognition of dynamic hand gestures in real-time is a difficult task because the system can never k...
Hand gestures can allow for natural approach to human-computer interaction. A novel low com- putatio...
We present a pipeline for recognizing dynamic freehand gestures on mobile devices based on extractin...
This thesis investigates a gesture segmentation and recognition scheme that employs a random forest ...
Deep learning is a new branch of machine learning, which is widely used by researchers in a lot of a...
This paper describes a novel method called Deep Dynamic Neural Networks (DDNN) for multimodal gestur...
We present an algorithm for extracting and classifying two-dimensional motion in an image sequence b...
Movement recognition is a hot issue in machine learning. The gesture recognition is related to video...
Gestures are spatiotemporal signals that contain valuable information. Humans can understand gestur...
The ChaLearn large-scale gesture recognition challenge has run twice in two workshops in conjunction...
Gesture recognition aims at understanding the ongoing human gestures. In this paper, we present a de...
In this paper, we propose using 3D Convolutional Neural Networks for large scale user-independent co...
This paper introduces a multi-class hand gesture recognition model developed to identify a set of ha...
Low latency detection of human-machine interactions is an important problem. This work proposes fast...
Continuous gesture recognition aims at recognizing the ongoing gestures from continuous gesture sequ...
Recognition of dynamic hand gestures in real-time is a difficult task because the system can never k...
Hand gestures can allow for natural approach to human-computer interaction. A novel low com- putatio...
We present a pipeline for recognizing dynamic freehand gestures on mobile devices based on extractin...
This thesis investigates a gesture segmentation and recognition scheme that employs a random forest ...
Deep learning is a new branch of machine learning, which is widely used by researchers in a lot of a...
This paper describes a novel method called Deep Dynamic Neural Networks (DDNN) for multimodal gestur...
We present an algorithm for extracting and classifying two-dimensional motion in an image sequence b...
Movement recognition is a hot issue in machine learning. The gesture recognition is related to video...
Gestures are spatiotemporal signals that contain valuable information. Humans can understand gestur...
The ChaLearn large-scale gesture recognition challenge has run twice in two workshops in conjunction...
Gesture recognition aims at understanding the ongoing human gestures. In this paper, we present a de...
In this paper, we propose using 3D Convolutional Neural Networks for large scale user-independent co...