TR2010-036
RelCom: Relational Combinatorics Features for Rapid Object Detection
-
- "RelCom: Relational Combinatorics Features for Rapid Object Detection", IEEE Workshop on Object Tracking and Classification Beyond and in the Visible Spectrum, June 2010.BibTeX TR2010-036 PDF
- @inproceedings{Venkatraman2010jun,
- author = {Venkatraman, V. and Porikli, F.M.},
- title = {RelCom: Relational Combinatorics Features for Rapid Object Detection},
- booktitle = {IEEE Workshop on Object Tracking and Classification Beyond and in the Visible Spectrum},
- year = 2010,
- month = jun,
- url = {https://www.merl.com/publications/TR2010-036}
- }
,
- "RelCom: Relational Combinatorics Features for Rapid Object Detection", IEEE Workshop on Object Tracking and Classification Beyond and in the Visible Spectrum, June 2010.
-
Research Areas:
Abstract:
We present a simple yet elegant feature, RelCom, and a boosted selection method to achieve a very low complexity object detector. We generate combinations of low-level feature coefficients and apply relational operations such as margin based similarity rule over each possible pair of these combinations to construct a proposition space. From this space we define combinatorial functions of Boolean operators to form complex hypotheses that model any logical proposition. In case these coefficients are associated with the pixel coordinates, they encapsulate higher order spatial structure within the object window. Our results on benchmark datasets prove that the boosted RelCom features can match the performance of HOG features of SVM-RBF while providing 5X speed up and significantly outperform SVM-linear while reducing the false alarm rate 5X~20X. In case of intensity features the improvement in false alarm rate over SVM-RBF is 14X with a 128X speed up. We also demonstrate that RelCom based on pixel features is very suitable and efficient for small object detection tasks.
Related News & Events
-
NEWS IEEE Workshop on Object Tracking and Classification Beyond and in the Visible Spectrum 2010: publication by MERL researchers and others Date: June 13, 2010
Where: IEEE Workshop on Object Tracking and Classification Beyond and in the Visible Spectrum
Research Area: Machine LearningBrief- The paper "RelCom: Relational Combinatorics Features for Rapid Object Detection" by Venkatraman, V. and Porikli, F.M. was presented at the IEEE Workshop on Object Tracking and Classification Beyond and in the Visible Spectrum.
-
AWARD OTCBVS 2010 Best Paper Award Date: June 1, 2010
Awarded to: Vijay Venkataraman and Fatih Porikli
Awarded for: "RelCom: Relational Combinatorics Features for Rapid Object Detection"
Awarded by: IEEE Workshop on Object Tracking and Classification Beyond and in the Visible Spectrum (OTCBVS)
Research Area: Machine Learning