Title :
Learning Similarities for Rigid and Non-rigid Object Detection
Author :
Kanezaki, Asako ; Rodola, Emanuele ; Cremers, Daniel ; Harada, Tatsuya
Abstract :
In this paper, we propose an optimization method for estimating the parameters that typically appear in graph-theoretical formulations of the matching problem for object detection. Although several methods have been proposed to optimize parameters for graph matching in a way to promote correct correspondences and to restrict wrong ones, our approach is novel in the sense that it aims at improving performance in the more general task of object detection. In our formulation, similarity functions are adjusted so as to increase the overall similarity among a reference model and the observed target, and at the same time reduce the similarity among reference and "non-target" objects. We evaluate the proposed method in two challenging scenarios, namely object detection using data captured with a Kinect sensor in a real environment, and intrinsic metric learning for deformable shapes, demonstrating substantial improvements in both settings.
Keywords :
graph theory; image matching; learning (artificial intelligence); object detection; deformable shapes; graph matching; graph-theoretical formulations; intrinsic metric learning; kinect sensor; learning similarities; nonrigid object detection; nontarget objects; real environment; reference model; rigid object detection; Feature extraction; Measurement; Object detection; Shape; Three-dimensional displays; Training; Vectors; 3D shape; RGBD; gradient descent method; graph matching; optimization;
Conference_Titel :
3D Vision (3DV), 2014 2nd International Conference on
Conference_Location :
Tokyo
DOI :
10.1109/3DV.2014.61