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Article

Detecting Human Actions in Drone Images Using YoloV5 and Stochastic Gradient Boosting

Details

Citation

Ahmad T, Cavazza M, Matsuo Y & Prendinger H (2022) Detecting Human Actions in Drone Images Using YoloV5 and Stochastic Gradient Boosting. Sensors, 22 (18), p. 7020. https://doi.org/10.3390/s22187020

Abstract
Human action recognition and detection from unmanned aerial vehicles (UAVs), or drones, has emerged as a popular technical challenge in recent years, since it is related to many use case scenarios from environmental monitoring to search and rescue. It faces a number of difficulties mainly due to image acquisition and contents, and processing constraints. Since drones’ flying conditions constrain image acquisition, human subjects may appear in images at variable scales, orientations, and occlusion, which makes action recognition more difficult. We explore low-resource methods for ML (machine learning)-based action recognition using a previously collected real-world dataset (the “Okutama-Action” dataset). This dataset contains representative situations for action recognition, yet is controlled for image acquisition parameters such as camera angle or flight altitude. We investigate a combination of object recognition and classifier techniques to support single-image action identification. Our architecture integrates YoloV5 with a gradient boosting classifier; the rationale is to use a scalable and efficient object recognition system coupled with a classifier that is able to incorporate samples of variable difficulty. In an ablation study, we test different architectures of YoloV5 and evaluate the performance of our method on Okutama-Action dataset. Our approach outperformed previous architectures applied to the Okutama dataset, which differed by their object identification and classification pipeline: we hypothesize that this is a consequence of both YoloV5 performance and the overall adequacy of our pipeline to the specificities of the Okutama dataset in terms of bias–variance tradeoff.

Journal
Sensors: Volume 22, Issue 18

StatusPublished
Publication date online30/09/2022
Date accepted by journal14/09/2022
PublisherMDPI AG
eISSN1424-8220

People (1)

Professor Marc Cavazza

Professor Marc Cavazza

Professor in Artificial Intelligence, Computing Science