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Vehicles Detection From Aerial Sequences 4 th European Micro-UAV Meeting. VEHICLES DETECTION FROM AERIAL SEQUENCES Center of Robotics, Electrical engineering and Automatic - EA3299 University of Picardie Jules Verne CREA, 7 rue du moulin neuf 80000 Amiens, France &
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Vehicles Detection From Aerial Sequences 4th European Micro-UAV Meeting VEHICLES DETECTION FROM AERIAL SEQUENCES Center of Robotics, Electrical engineering and Automatic - EA3299 University of Picardie Jules Verne CREA, 7 rue du moulin neuf 80000 Amiens, France & Diagnosis and Advanced Vehicles (DIVA) Pole Conseil Régional de Picardie University of Picardie Jules Verne 1
Vehicles Detection From Aerial Sequences 4th European Micro-UAV Meeting Aerial sequences Analysis taken from an UAV-Camera system Proposed approaches aim to extract and recognize vehicles in the road University of Picardie Jules Verne 2
Vehicles Detection From Aerial Sequences 4th European Micro-UAV Meeting • Using computer vision tools => A large basis of information • A whole description of the traffic : • Vehicle counts • Vehicle speed • Vehicle density • Flow rates … etc. • Road traffic monitoring : • Congestion and incident detection • Law enforcement • Automatic vehicle tracking… etc. University of Picardie Jules Verne 3
Vehicles Detection From Aerial Sequences 4th European Micro-UAV Meeting • Computer vision systems for road traffic monitoring : • Static vision system : fixed camera • Dynamic vision system : moving camera University of Picardie Jules Verne 4
Vehicles Detection From Aerial Sequences 4th European Micro-UAV Meeting Static vision system => Fixed background : Approaches farm the difference between acquired images and background Moving vehicles are ,so, extracted University of Picardie Jules Verne 5
Vehicles Detection From Aerial Sequences 4th European Micro-UAV Meeting Dynamic vision system : Camera-UAV system Having a fixed background is impossible University of Picardie Jules Verne 6
Vehicles Detection From Aerial Sequences 4th European Micro-UAV Meeting • We propose two approaches to extract vehicles : • Approch based on perceptual (geometrical) organization • Approch based on « common fate » principle University of Picardie Jules Verne 7
Vehicles Detection From Aerial Sequences 4th European Micro-UAV Meeting Approch based on perceptual (geometrical) organization University of Picardie Jules Verne 8
Vehicles Detection From Aerial Sequences 4th European Micro-UAV Meeting Approch based on perceptual (geometrical) organization • A graph problem where : • Nodes are images edges. • Links based on two criteria : • Parallelism • Proximity University of Picardie Jules Verne 9
Vehicles Detection From Aerial Sequences 4th European Micro-UAV Meeting Approch based on perceptual (geometrical) organization University of Picardie Jules Verne 10
Vehicles Detection From Aerial Sequences 4th European Micro-UAV Meeting Approch based on « common fate » Principle • Sequences taken from an UAV-camera system • Two types of movement : • objects movement or displacement (in our case : edges presenting vehicles) • background movement. • The idea : distingush between these two kinds of movement University of Picardie Jules Verne 11
Vehicles Detection From Aerial Sequences 4th European Micro-UAV Meeting Approch based on « common fate » Principle Corners Detection : Image(t),Image(t+1) Primitives Detection : Image(t) Primitives Description Matching Displacements Computation Homogeneous Primitives Extraction rank(W) ? Results Verifying ? University of Picardie Jules Verne 12
Vehicles Detection From Aerial Sequences 4th European Micro-UAV Meeting Approch based on « common fate » Principle • Why do we use corners data to matching images edges ? • Corners matching process is less complicated than edges matching process • Corners rate repeatability is more elevated than edges rate repeatability • Edge displacement is computed as the mean of corners displacements, so false matching effects are reduced University of Picardie Jules Verne 13
Vehicles Detection From Aerial Sequences 4th European Micro-UAV Meeting Approch based on « common fate » Principle Matching tool : Computing of the Mahalanobis distances between corners invariants vectors. University of Picardie Jules Verne 14
Vehicles Detection From Aerial Sequences 4th European Micro-UAV Meeting Approch based on « common fate » Principle • Homogeneous Primitives Extraction ? • A graph problem where : • Nodes are images edges • Links are nodes displacements similarity University of Picardie Jules Verne 15
Vehicles Detection From Aerial Sequences 4th European Micro-UAV Meeting Approch based on « common fate » Principle Partitioning tool : Normalized cuts technique Link between two nodes (edges) i and j : University of Picardie Jules Verne 16
, Vehicles Detection From Aerial Sequences 4th European Micro-UAV Meeting Approch based on « common fate » Principle Verifying Algorithm : The Dempster Shafer Theory Verifying system has 5 input sensors and 3 output degrees University of Picardie Jules Verne 17
Vehicles Detection From Aerial Sequences 4th European Micro-UAV Meeting Approch based on « common fate » Principle V = 79,95 % Conflict = 1 % University of Picardie Jules Verne 18
Vehicles Detection From Aerial Sequences 4th European Micro-UAV Meeting Approch based on « common fate » Principle NR : Number of Rejected classifications before converging University of Picardie Jules Verne 19
Vehicles Detection From Aerial Sequences 4th European Micro-UAV Meeting Approch based on « common fate » Principle NR : Number of Rejected classifications before converging University of Picardie Jules Verne 20
Vehicles Detection From Aerial Sequences 4th European Micro-UAV Meeting THANK YOU ! University of Picardie Jules Verne 21