Title :
Fast Multiclass Vehicle Detection on Aerial Images
Author :
Kang Liu ; Mattyus, Gellert
Author_Institution :
Remote Sensing Technol. Inst., German Aerosp. Center, Wessling, Germany
Abstract :
Detecting vehicles in aerial images provides important information for traffic management and urban planning. Detecting the cars in the images is challenging due to the relatively small size of the target objects and the complex background in man-made areas. It is particularly challenging if the goal is near-real-time detection, i.e., within few seconds, on large images without any additional information, e.g., road database and accurate target size. We present a method that can detect the vehicles on a 21-MPixel original frame image without accurate scale information within seconds on a laptop single threaded. In addition to the bounding box of the vehicles, we extract also orientation and type (car/truck) information. First, we apply a fast binary detector using integral channel features in a soft-cascade structure. In the next step, we apply a multiclass classifier on the output of the binary detector, which gives the orientation and type of the vehicles. We evaluate our method on a challenging data set of original aerial images over Munich and a data set captured from an unmanned aerial vehicle (UAV).
Keywords :
autonomous aerial vehicles; geophysical image processing; image classification; object detection; terrain mapping; 21-MPixel original frame image; Munich; aerial images; binary detector; car detection; fast multiclass vehicle detection; integral channel features; man-made areas; multiclass classifier; near-real-time detection; road database; scale information; single threaded laptop; soft-cascade structure; target size; traffic management; unmanned aerial vehicle; urban planning; Detectors; Feature extraction; Histograms; Roads; Training; Vehicle detection; Vehicles; Classification; near real-time; vehicle detection;
Journal_Title :
Geoscience and Remote Sensing Letters, IEEE
DOI :
10.1109/LGRS.2015.2439517