Applied Sciences (Jun 2023)

Multiscale YOLOv5-AFAM-Based Infrared Dim-Small-Target Detection

  • Yuexing Wang,
  • Liu Zhao,
  • Yixiang Ma,
  • Yuanyuan Shi,
  • Jinwen Tian

DOI
https://doi.org/10.3390/app13137779
Journal volume & issue
Vol. 13, no. 13
p. 7779

Abstract

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Infrared detection plays an important role in the military, aerospace, and other fields, which has the advantages of all-weather, high stealth, and strong anti-interference. However, infrared dim-small-target detection suffers from complex backgrounds, low signal-to-noise ratio, blurred targets with small area percentages, and other challenges. In this paper, we proposed a multiscale YOLOv5-AFAM algorithm to realize high-accuracy and real-time detection. Aiming at the problem of target intra-class feature difference and inter-class feature similarity, the Adaptive Fusion Attention Module (AFAM) was proposed to generate feature maps that are calculated to weigh the features in the network and make the network focus on small targets. This paper proposed a multiscale fusion structure to solve the problem of small and variable detection scales in infrared vehicle targets. In addition, the downsampling layer is improved by combining Maxpool and convolutional downsampling to reduce the number of model parameters and retain the texture information. For multiple scenarios, we constructed an infrared dim and small vehicle target detection dataset, ISVD. The multiscale YOLOv5-AFAM was conducted on the ISVD dataset. Compared to YOLOv7, [email protected] achieves a small improvement while the parameters are only 17.98% of it. In contrast, with the YOLOv5s model, [email protected] was improved from 81.4% to 85.7% with a parameter reduction from 7.0 M to 6.6 M. The experimental results demonstrate that the multiscale YOLOv5-AFAM has a higher detection accuracy and detection speed on infrared dim and small vehicles.

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