SOD-YOLOv8-Enhancing YOLOv8 for Small Object Detection in Aerial Imagery and Traffic Scenes.

Sensors (Basel)

Department of Civil Engineering and Engineering Mechanics, Columbia University, New York, NY 10027, USA.

Published: September 2024

AI Article Synopsis

  • Object detection is essential for applications like traffic management and autonomous vehicles, but detecting small objects from high-altitude images remains difficult due to size and environmental factors.
  • The proposed model, small object detection YOLOv8 (SOD-YOLOv8), improves detection by enhancing feature integration and adding a new detection layer for better accuracy in identifying small objects.
  • SOD-YOLOv8 outperforms existing models by improving recall, precision, and mean average precision (mAP) significantly, showcasing its effectiveness in real-world traffic scenarios without increasing computational costs.

Article Abstract

Object detection, as a crucial aspect of computer vision, plays a vital role in traffic management, emergency response, autonomous vehicles, and smart cities. Despite the significant advancements in object detection, detecting small objects in images captured by high-altitude cameras remains challenging, due to factors such as object size, distance from the camera, varied shapes, and cluttered backgrounds. To address these challenges, we propose small object detection YOLOv8 (SOD-YOLOv8), a novel model specifically designed for scenarios involving numerous small objects. Inspired by efficient generalized feature pyramid networks (GFPNs), we enhance multi-path fusion within YOLOv8 to integrate features across different levels, preserving details from shallower layers and improving small object detection accuracy. Additionally, we introduce a fourth detection layer to effectively utilize high-resolution spatial information. The efficient multi-scale attention module (EMA) in the C2f-EMA module further enhances feature extraction by redistributing weights and prioritizing relevant features. We introduce powerful-IoU (PIoU) as a replacement for CIoU, focusing on moderate quality anchor boxes and adding a penalty based on differences between predicted and ground truth bounding box corners. This approach simplifies calculations, speeds up convergence, and enhances detection accuracy. SOD-YOLOv8 significantly improves small object detection, surpassing widely used models across various metrics, without substantially increasing the computational cost or latency compared to YOLOv8s. Specifically, it increased recall from 40.1% to 43.9%, precision from 51.2% to 53.9%, mAP from 40.6% to 45.1%, and mAP from 24% to 26.6%. Furthermore, experiments conducted in dynamic real-world traffic scenes illustrated SOD-YOLOv8's significant enhancements across diverse environmental conditions, highlighting its reliability and effective object detection capabilities in challenging scenarios.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11478522PMC
http://dx.doi.org/10.3390/s24196209DOI Listing

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