| Literature DB >> 25856330 |
Yanning Zhang1, Xiaomin Tong2, Tao Yang3, Wenguang Ma4.
Abstract
With the wide development of UAV (Unmanned Aerial Vehicle) technology, moving target detection for aerial video has become a popular research topic in the computer field. Most of the existing methods are under the registration-detection framework and can only deal with simple background scenes. They tend to go wrong in the complex multi background scenarios, such as viaducts, buildings and trees. In this paper, we break through the single background constraint and perceive the complex scene accurately by automatic estimation of multiple background models. First, we segment the scene into several color blocks and estimate the dense optical flow. Then, we calculate an affine transformation model for each block with large area and merge the consistent models. Finally, we calculate subordinate degree to multi-background models pixel to pixel for all small area blocks. Moving objects are segmented by means of energy optimization method solved via Graph Cuts. The extensive experimental results on public aerial videos show that, due to multi background models estimation, analyzing each pixel's subordinate relationship to multi models by energy minimization, our method can effectively remove buildings, trees and other false alarms and detect moving objects correctly.Entities:
Year: 2015 PMID: 25856330 PMCID: PMC4431192 DOI: 10.3390/s150408214
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1The comparison of moving detection results by different methods. (a) Original image (b) Moving detection with false alarms in red circles when using one affine model to describe the scene (c) Moving detection by our method.
Figure 2The flowchart of moving object detection based on multi-model estimation.
Figure 3The distribution of motion vectors in blocks.
Figure 4Detection comparisons in complex overpass scenarios.
Figure 5Detection comparisons in scenarios with many trees.
Figure 6Detection comparisons in scenario with many buildings.
Figure 7The statistical result of our method and the traditional methods by [14,20].