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Vehicle detection from multi-modal aerial imagery using YOLOv3 with mid-level fusion

Mayur Dhanaraj, Manish Sharma, Tiyasa Sarkar, Srivallabha Karnam, Dimitris G. Chachlakis, Raymond Ptucha, Panos P. Markopoulos, Eli Saber

202027 citationsDOI

Abstract

Target detection is an important problem in remote-sensing with crucial applications in law-enforcement, military and security surveillance, search-and-rescue operations, and air traffic control, among others. Owing to the recently increased availability of computational resources, deep-learning based methods have demonstrated state-of- the-art performance in target detection from unimodal aerial imagery. In addition, owing to the availability of remote-sensing data from various imaging modalities, such as RGB, infrared, hyper-spectral, multi-spectral, synthetic aperture radar, and lidar, researchers have focused on leveraging the complementary information offered by these various modalities. Over the past few years, deep-learning methods have demonstrated enhanced performance using multi-modal data. In this work, we propose a method for vehicle detection from multi-modal aerial imagery, by means of a modified YOLOv3 deep neural network that conducts mid-level fusion. To the best of our knowledge, the proposed mid-level fusion architecture is the first of its kind to be used for vehicle detection from multi-modal aerial imagery using a hierarchical object detection network. Our experimental studies corroborate the advantages of the proposed method.

Topics & Concepts

Computer scienceDeep learningArtificial intelligenceModalObject detectionSynthetic aperture radarSensor fusionComputer visionLidarRemote sensingPattern recognition (psychology)GeographyPolymer chemistryChemistryAdvanced Neural Network ApplicationsInfrared Target Detection MethodologiesAdvanced Image Fusion Techniques
Vehicle detection from multi-modal aerial imagery using YOLOv3 with mid-level fusion | Litcius