Sciweavers

ICPR
2004
IEEE

Object Recognition Using Segmentation for Feature Detection

15 years 1 months ago
Object Recognition Using Segmentation for Feature Detection
: A new method is presented to learn object categories from unlabeled and unsegmented images for generic object recognition. We assume that each object can be characterized by a set of typical regions, and use a new segmentation method - "Similarity-Measure Segmentation" - to split the images into regions of interest. This approach may also deliver segments, which are split into several disconnected parts, which turns out to be a powerful description of local similarities. Several textural features are calculated for each region, which are used to learn object categories with Boosting. We demonstrate the flexibility and power of our method by excellent results on various datasets. In comparison, our recognition results are significantly higher than results published in related work.
Andreas Opelt, Axel Pinz, Michael Fussenegger, Pet
Added 09 Nov 2009
Updated 09 Nov 2009
Type Conference
Year 2004
Where ICPR
Authors Andreas Opelt, Axel Pinz, Michael Fussenegger, Peter Auer
Comments (0)