The potential value of human action recognition has led to it becoming one of the most active research subjects in computer vision. In this paper, we propose a novel method to automatically generate low-level spatio-temporal descriptors showing good performance, for high-level human-action recognition tasks. We address this as an optimization problem using genetic programming (GP), an evolutionary method, which produces the descriptor by combining a set of primitive 3D operators. As far as we are aware, this is the first report of using GP for evolving spatio-temporal descriptors for action recognition. In our evolutionary architecture, the average cross-validation classification error calculated using the support-vector machine (SVM) class...
This paper presents a novel feature descriptor for multiview human action recognition. This descript...
This paper presents a novel feature descriptor for multiview human action recognition. This descript...
In this paper, global-level view-invariant descriptors for human action recognition using 3D reconst...
The potential value of human action recognition has led to it becoming one of the most active resear...
Extracting discriminative and robust features from video sequences is the first and most critical st...
Extracting discriminative and robust features from video sequences is the first and most critical st...
Automatic gesture recognition has received much attention due to its potential in various applicatio...
Real-world scene recognition has been one of the most challenging research topics in computer vision...
This paper presents an approach to recognition of human actions such as sitting, standing, walking o...
This thesis analyzes the human action recognition problem. Human actions are modeled as a time evolv...
In this paper, an approach for human action recognition using genetic algorithms (GA) and deep convo...
International audienceA new spatio temporal descriptor is proposed for action recognition. The actio...
In recent years, human action recognition is modeled as a spatial-temporal video volume. Such aspect...
Real-world scene recognition has been one of the most challenging research topics in computer vision...
We present a discriminative approach to human action recognition. At the heart of our approach is th...
This paper presents a novel feature descriptor for multiview human action recognition. This descript...
This paper presents a novel feature descriptor for multiview human action recognition. This descript...
In this paper, global-level view-invariant descriptors for human action recognition using 3D reconst...
The potential value of human action recognition has led to it becoming one of the most active resear...
Extracting discriminative and robust features from video sequences is the first and most critical st...
Extracting discriminative and robust features from video sequences is the first and most critical st...
Automatic gesture recognition has received much attention due to its potential in various applicatio...
Real-world scene recognition has been one of the most challenging research topics in computer vision...
This paper presents an approach to recognition of human actions such as sitting, standing, walking o...
This thesis analyzes the human action recognition problem. Human actions are modeled as a time evolv...
In this paper, an approach for human action recognition using genetic algorithms (GA) and deep convo...
International audienceA new spatio temporal descriptor is proposed for action recognition. The actio...
In recent years, human action recognition is modeled as a spatial-temporal video volume. Such aspect...
Real-world scene recognition has been one of the most challenging research topics in computer vision...
We present a discriminative approach to human action recognition. At the heart of our approach is th...
This paper presents a novel feature descriptor for multiview human action recognition. This descript...
This paper presents a novel feature descriptor for multiview human action recognition. This descript...
In this paper, global-level view-invariant descriptors for human action recognition using 3D reconst...