Temporal segmentation of human motion into actions is central to the understanding and building of computational models of human motion and activity recognition. Several issues contribute to the challenge of temporal segmentation and classification of human motion. These include the large variability in the temporal scale and periodicity of human actions, the complexity of representing articulated motion, and the exponential nature of all possible movement combinations. We provide initial results from investigating two distinct problems - classification of the overall task being performed, and the more difficult problem of classifying individual frames over time into specific actions. We explore first-person sensing through a wearable camer...
Abstract The automated analysis of activity in digital multimedia, and especially video, is gaining ...
As research in computer vision has shifted from only processing single, static images to the manipul...
In this paper, we present an automated video analysis system which addresses segmentation and detect...
The widespread use of digital multimedia in applications, such as security, surveillance, and the se...
One of the biggest difficulties in human action anal-ysis is the temporal complexity and structure o...
One of the biggest dificulties in human action analysis is the temporal complexity and structure of ...
Current methods of human activity recognition face many challenges, such as the need for multiple se...
In this report, a vision-based framework is proposed for learning and inferring occupant activities ...
The aim of this research is to present a methodology for the automatic seg-mentation and recognition...
Activity recognition deals with the task of figuring out a person’s current activity based on the re...
Temporal segmentation of human motion into actions is a crucial step for understanding and building ...
This work introduces an efficient method for fully automatic temporal segmentation of human motion s...
This thesis contributes to the literature of understanding and recognizing human activities in video...
This paper discusses the problem of recognizing interaction-level human activities from a first-pers...
From wearable devices to depth cameras, researchers have exploited various multimodal data to recogn...
Abstract The automated analysis of activity in digital multimedia, and especially video, is gaining ...
As research in computer vision has shifted from only processing single, static images to the manipul...
In this paper, we present an automated video analysis system which addresses segmentation and detect...
The widespread use of digital multimedia in applications, such as security, surveillance, and the se...
One of the biggest difficulties in human action anal-ysis is the temporal complexity and structure o...
One of the biggest dificulties in human action analysis is the temporal complexity and structure of ...
Current methods of human activity recognition face many challenges, such as the need for multiple se...
In this report, a vision-based framework is proposed for learning and inferring occupant activities ...
The aim of this research is to present a methodology for the automatic seg-mentation and recognition...
Activity recognition deals with the task of figuring out a person’s current activity based on the re...
Temporal segmentation of human motion into actions is a crucial step for understanding and building ...
This work introduces an efficient method for fully automatic temporal segmentation of human motion s...
This thesis contributes to the literature of understanding and recognizing human activities in video...
This paper discusses the problem of recognizing interaction-level human activities from a first-pers...
From wearable devices to depth cameras, researchers have exploited various multimodal data to recogn...
Abstract The automated analysis of activity in digital multimedia, and especially video, is gaining ...
As research in computer vision has shifted from only processing single, static images to the manipul...
In this paper, we present an automated video analysis system which addresses segmentation and detect...