The task of aligning multiple audio visual sequences with similar contents needs careful synchronisation in both spatial and temporal domains. It is a challenging task due to a broad range of contents variations, background clutter, occlusions, and other factors. This thesis is concerned with aligning video contents by characterising the spatial and temporal information embedded in the high-dimensional space. To that end a three- stage framework is developed, involving space-time representation of video clips with local linear coding, followed by their alignment in the manifold embedded space. The first two stages present a video representation techniques based on local feature extraction and linear coding methods. Firstly, the scale invari...
This paper presents a unified framework for human ac-tion classification and localization in video u...
This paper presents a unified framework for human action classification and localization in video us...
This thesis presents methods for the temporal alignment of 3D performance capture data. Discussion o...
The task of aligning multiple audio visual sequences with similar contents needs careful synchronisa...
This thesis studies the problem of spatio-temporal alignment of video sequences, i.e., establishing ...
This paper studies the problem of sequence-to-sequence alignment, namely establishing correspondence...
This paper presents a novel framework for matching video sequences using the spatiotemporal segmenta...
This paper presents a novel framework for matching video sequences using the spatiotemporal segmenta...
In this thesis the problem of automatic human action recognition and localization in videos is studi...
In this paper, we propose a novel method to establish temporal correspondence between the frames of ...
The goal of human action recognition on videos is to determine in an automatic way what is happening...
Abstract. We introduced an algorithm for sequence alignment, based on maximizing local space-time co...
Abstract—This paper addresses the problem of video alignment. We present efficient approaches that a...
This paper presents an approach for establishing correspondences in time and in space between two di...
ABSTRACT We propose a new graph-based data structure, called Spatio Temporal Region Graph (STRG) whi...
This paper presents a unified framework for human ac-tion classification and localization in video u...
This paper presents a unified framework for human action classification and localization in video us...
This thesis presents methods for the temporal alignment of 3D performance capture data. Discussion o...
The task of aligning multiple audio visual sequences with similar contents needs careful synchronisa...
This thesis studies the problem of spatio-temporal alignment of video sequences, i.e., establishing ...
This paper studies the problem of sequence-to-sequence alignment, namely establishing correspondence...
This paper presents a novel framework for matching video sequences using the spatiotemporal segmenta...
This paper presents a novel framework for matching video sequences using the spatiotemporal segmenta...
In this thesis the problem of automatic human action recognition and localization in videos is studi...
In this paper, we propose a novel method to establish temporal correspondence between the frames of ...
The goal of human action recognition on videos is to determine in an automatic way what is happening...
Abstract. We introduced an algorithm for sequence alignment, based on maximizing local space-time co...
Abstract—This paper addresses the problem of video alignment. We present efficient approaches that a...
This paper presents an approach for establishing correspondences in time and in space between two di...
ABSTRACT We propose a new graph-based data structure, called Spatio Temporal Region Graph (STRG) whi...
This paper presents a unified framework for human ac-tion classification and localization in video u...
This paper presents a unified framework for human action classification and localization in video us...
This thesis presents methods for the temporal alignment of 3D performance capture data. Discussion o...