IEEE Access (Jan 2024)

Enhancing Object Detection in Dense Images: Adjustable Non-Maximum Suppression for Single-Class Detection

  • Kyeongmi Noh,
  • Seul Ki Hong,
  • Stephen Makonin,
  • Yongkeun Lee

DOI
https://doi.org/10.1109/ACCESS.2024.3459629
Journal volume & issue
Vol. 12
pp. 130253 – 130263

Abstract

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Deep learning-based object detection technology often relies on non-maximum suppression (NMS) algorithms to eliminate redundant detections. However, the conventional NMS algorithm struggles with distinguishing between overlapping and small objects due to its simple constraints. While Soft-NMS offers a slight improvement in object detection performance, it still falls short in addressing this challenge. Our proposed solution, adjustable-NMS, represents a significant advancement. While performing comparably to NMS and Soft-NMS on less dense images where objects are easily countable, adjustable-NMS excels in scenarios with higher object density or smaller objects. In such cases, it outperforms both NMS and Soft-NMS, showcasing notably superior object detection capabilities. On average, the improvement achieved with adjustable-NMS reaches an impressive 33.3%. This demonstrates adjustable-NMS’s efficacy in enhancing object detection accuracy, particularly in challenging environments characterized by dense scenes or diminutive objects.

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