This paper describes a method for building visual “maps” from video data using quantized descriptions of motion. This enables unsupervised classification of scene regions based upon the motion patterns observed within them. Our aim is to recognise generic places using a qualitative representation of the spatial layout of regions with common motion patterns. Such places are characterised by the distribution of these motion patterns as opposed to static appearance patterns, and could include locations such as train platforms, bus stops, and park benches. Motion descriptions are obtained by tracking image features over a temporal window, and are then subjected to normalisation and thresholding to provide a quantized representation of that feat...
2014-08-05With the decreasing cost of collecting data, the deluge of surveillance videos makes it ne...
We present a novel method for the discovery and statistical representation of motion patterns in a s...
The aim of this thesis is to develop discriminative and efficient representations of human actions i...
This paper describes a method for building visual “maps” from video data using quantized description...
This paper describes a method for building visual scene models from video data using quantized descr...
This paper describes a method for building visual scene models from video data using quantized descr...
This paper describes a method for building semantic scene models from video data using observed moti...
This paper describes a method for building semantic scene models from video data using observed moti...
In this dissertation, we address the problem of discovery and representation of motion patterns in a...
Learning dominant motion patterns or activities from a video is an important surveillance problem, e...
We present an unsupervised approach for learning a layered representation of a scene from a video fo...
Abstract—This paper considers the problem of automatically learning an activity-based semantic scene...
AbstractThis paper presents a method to extract a part-based model of an observed scene from a video...
Motion provides a rich source of information about the world. It can be used as an important cue to ...
We present a novel method for the discovery and statistical representation of motion patterns in a s...
2014-08-05With the decreasing cost of collecting data, the deluge of surveillance videos makes it ne...
We present a novel method for the discovery and statistical representation of motion patterns in a s...
The aim of this thesis is to develop discriminative and efficient representations of human actions i...
This paper describes a method for building visual “maps” from video data using quantized description...
This paper describes a method for building visual scene models from video data using quantized descr...
This paper describes a method for building visual scene models from video data using quantized descr...
This paper describes a method for building semantic scene models from video data using observed moti...
This paper describes a method for building semantic scene models from video data using observed moti...
In this dissertation, we address the problem of discovery and representation of motion patterns in a...
Learning dominant motion patterns or activities from a video is an important surveillance problem, e...
We present an unsupervised approach for learning a layered representation of a scene from a video fo...
Abstract—This paper considers the problem of automatically learning an activity-based semantic scene...
AbstractThis paper presents a method to extract a part-based model of an observed scene from a video...
Motion provides a rich source of information about the world. It can be used as an important cue to ...
We present a novel method for the discovery and statistical representation of motion patterns in a s...
2014-08-05With the decreasing cost of collecting data, the deluge of surveillance videos makes it ne...
We present a novel method for the discovery and statistical representation of motion patterns in a s...
The aim of this thesis is to develop discriminative and efficient representations of human actions i...