6533b85efe1ef96bd12c07f2

RESEARCH PRODUCT

A2Ba: Adaptive Background Modelling for Visual Aerial Surveillance Conditions

Philippe BrunetSidi-mohammed SenouciFrancisco Sanchez-fernandez

subject

lcsh:Computer engineering. Computer hardwareComputer Networks and CommunicationsComputer sciencebusiness.industryComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISIONKDElcsh:TK7885-7895lcsh:TA168Computer Science Applicationsbackground modelling[SPI]Engineering Sciences [physics]Image processinglcsh:Systems engineeringControl and Systems Engineeringunmanned aerial vehicleComputer visionArtificial intelligenceGMMmoving objectsbusinessmobile observerSimulationInformation Systemsbackground subtraction

description

International audience; Background modelling algorithms are widely used to define a part of an image that most time remains stationary in a video. In surveillance tasks, this model helps to recognize those outlier objects in an area under monitoring. Set up a background model on mobile platforms (UAVs, intelligent cars, etc.) is a challenging task due camera motion when images are acquired. In this paper, we propose A2Ba, a robust method to support instabilities caused by aerial images fusing different information about image motion. We used frame difference as first approximation, then age of pixels is estimated. This latter gives us an invariability level of a pixel over time. Gradient direction of ages and an adaptive weight are used to reduce impact from camera motion on background modelling. We tested A2Ba simulating several conditions that impair aerial image acquisition such as intentional and unintentional camera motion. Experimental results show improved performance compared to baseline algorithms GMM and KDE.

10.4108/inis.2.4.e3https://hal.archives-ouvertes.fr/hal-02539884