A unified system for object detection, texture recognition, and context analysis based on the standard model feature set (2005)
| Venue: | In British Machine Vision Conference (BMVC |
| Citations: | 11 - 5 self |
BibTeX
@INPROCEEDINGS{Bileschi05aunified,
author = {Stanley Bileschi and Lior Wolf},
title = {A unified system for object detection, texture recognition, and context analysis based on the standard model feature set},
booktitle = {In British Machine Vision Conference (BMVC},
year = {2005}
}
Years of Citing Articles
OpenURL
Abstract
Recently, a neuroscience inspired set of visual features was introduced. It was shown that this representation facilitates better performance than stateof-the-art vision systems for object recognition in cluttered and unsegmented images. In this paper, we investigate the utility of these features in other common scene-understanding tasks. We show that this outstanding performance extends to shape-based object detection in the usual windowing framework, to amorphous object detection as a texture classification task, and finally to context understanding These tasks are performed on a large set of images which were collected as a benchmark for the problem of scene understanding. The final system is able to reliably identify cars, pedestrians, bicycles, sky, road, buildings and trees in a diverse set of images. 1.







