Title :
Unconstrained 1D range and 2D image based human detection
Author :
Kocamaz, Mehmet ; Porikli, Fatih
Author_Institution :
Univ. of Delaware, Newark, DE, USA
Abstract :
An accurate and computationally very fast multimodal human detector is presented. This 1D+2D detector fuses 1D range scan and 2D image information via an effective geometric descriptor and a silhouette based visual representation within a radial basis function kernel support vector machine learning framework. Unlike the existing approaches, the proposed 1D+2D detector does not make any restrictive assumptions on the range scan positions, thus it is applicable to a wide range of real-life detection tasks. To analyze the discriminative power of the geometric descriptor, a range scan only version, 1D+, is also evaluated. Extensive experiments demonstrate that the 1D+2D detector works robustly under challenging imaging conditions and achieves several orders of magnitude performance improvement while reducing the computational load drastically. In addition, a new multi-modal (LIDAR, depth image, optical image) dataset, DontHitMe, is introduced. This dataset contains 40,000 registered frames and 3,600 manually annotated human objects. It depicts challenging illumination conditions in indoors and outdoors environments and is publicly available to our community.
Keywords :
computational geometry; image representation; learning (artificial intelligence); lighting; object detection; pedestrians; radial basis function networks; road accidents; road traffic; support vector machines; traffic engineering computing; 1D+2D detector; 2D image based human detection; DontHitMe; LIDAR; National Highway Traffic Safety Administration; computational load reduction; depth image; geometric descriptor; illumination conditions; multimodal human detector; optical image; radial basis function kernel framework; real-life detection tasks; silhouette based visual representation; support vector machine learning framework; traffic accidents; unconstrained 1D range scan; Cameras; Detectors; Feature extraction; Laser radar; Support vector machines; Training; Visualization;
Conference_Titel :
Intelligent Robots and Systems (IROS), 2013 IEEE/RSJ International Conference on
Conference_Location :
Tokyo
DOI :
10.1109/IROS.2013.6696419