Title :
Detection and recognition of moving objects using statistical motion detection and Fourier descriptors
Author :
Toth, Daniel ; Aach, Til
Author_Institution :
Inst. for Signal Process., Univ. of Luebeck, Lubeck, Germany
Abstract :
Object recognition, i.e. classification of objects into one of several known object classes, generally is a difficult task. In this paper we address the problem of detecting and classifying moving objects in image sequences from traffic scenes recorded with a static camera. In the first step, a statistical, illumination invariant motion detection algorithm is used to produce binary masks of the scene-changes. Next, Fourier descriptors of the shapes from the refined masks are computed and used as feature vectors describing the different objects in the scene. Finally, a feedforward neural net is used to distinguish between humans, vehicles, and background clutter.
Keywords :
clutter; computer vision; fast Fourier transforms; feedforward neural nets; image sequences; object detection; object recognition; statistical analysis; traffic engineering computing; Fourier descriptors; background clutter; binary masks; feedforward neural net; human detection; illumination invariant algorithm; image sequences; moving object detection; moving object recognition; scene-changes; static camera; statistical motion detection; traffic scenes; vehicle detection; Cameras; Feedforward neural networks; Image sequences; Layout; Lighting; Motion detection; Neural networks; Object detection; Object recognition; Shape;
Conference_Titel :
Image Analysis and Processing, 2003.Proceedings. 12th International Conference on
Print_ISBN :
0-7695-1948-2
DOI :
10.1109/ICIAP.2003.1234088