Litcius/Paper detail

Performance Evaluation and Analysis of Drone-Based Vehicle Detection Techniques From Deep Learning Perspective

Igor Bisio, Halar Haleem, Chiara Garibotto, Fabio Lavagetto, Andrea Sciarrone

2021IEEE Internet of Things Journal44 citationsDOI

Abstract

From smart cities development perspective, road vehicle detection exploiting drone-based aerial imagery is a crucial part of traffic surveillance and monitoring systems where effective results are of utmost demand. A recent boom in the field of deep learning (DL) has provided remarkable development in the problem of vehicle detection. Aerial views pose more complexity with respect to the ground view but the rapid advancement in the field of DL, the volume of data, and hardware configuration has facilitated the realization of these intelligent detection systems effectively. In this article, a detailed performance evaluation of some of the main state-of-the-art DL-based object detection techniques has been carried out along with an experimental analysis of vehicle detection using the RetinaNet framework on the VisDrone-benchmark data set. The performance of the RetinaNet framework has been validated together with the results provided by the VisDrone team. Further experiments are then conducted to investigate the impact of various parameters. Finally, the selection of suitable models that can be practically implemented is also discussed based both on a qualitative and quantitative analysis.

Topics & Concepts

Computer scienceDroneObject detectionPerspective (graphical)Field (mathematics)Benchmark (surveying)Artificial intelligenceDeep learningReal-time computingMachine learningPattern recognition (psychology)GeodesyPure mathematicsGeneticsMathematicsBiologyGeographyAdvanced Neural Network ApplicationsVideo Surveillance and Tracking MethodsAutonomous Vehicle Technology and Safety