Article
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), Art. No.: 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¨Cvariance tradeoff.
Keywords
action detection; YoloV5; gradient boosting classifier
Journal
Sensors: Volume 22, Issue 18
| Status | Published |
|---|---|
| Publication date | 30/09/2022 |
| Publication date online | 30/09/2022 |
| Date accepted by journal | 14/09/2022 |
| URL | |
| Publisher | MDPI AG |
| eISSN | 1424-8220 |