New AEA-RDCP Algorithm Enhances Maritime Safety with Superior Fog Detection and Visibility Estimation

September 13, 2024
New AEA-RDCP Algorithm Enhances Maritime Safety with Superior Fog Detection and Visibility Estimation
  • A new algorithm, AEA-RDCP, has been developed to process images for estimating fog density and visibility, significantly enhancing safety in maritime navigation.

  • This research introduces a novel methodology that improves atmospheric light estimation and refines fog detection algorithms, leading to greater accuracy.

  • The study specifically aims to enhance ship detection in coastal waters during foggy conditions by utilizing a modified object detection model known as YOLOv8s-Fog.

  • Improvements to the YOLOv8 model for detecting cone buckets include CA attention, color space transformation, and a new loss function, which collectively boost accuracy and recall rates.

  • The study was conducted by authors Mingrui Dai, Guohua Li, and Weifeng Shi from the Institute of Computing Technology, China Academy of Railway Sciences in Beijing.

  • The article detailing this research was submitted on August 13, 2024, revised on September 8, accepted on September 11, and published on September 12, 2024.

  • For the research, two datasets of marine images were created, one with minimal atmospheric light interference and another heavily influenced by it, allowing for comparative analysis.

  • The study underscores the necessity for onboard sensors to collect data that ensures safe navigation in poor visibility conditions.

  • The findings of this research are documented in the journal 'Sensors', volume 24, article number 5930.

  • The enhanced YOLOv8s-Fog model achieved an average detection accuracy of 74.4%, surpassing the standard YOLOv8s by 1.2%.

  • In South Korea, there are 23 observer measurement centers and 291 meteorological systems dedicated to measuring visibility, highlighting the importance of accurate visibility data.

  • Visibility measurement equipment, which relies on optical sensors, is crucial yet can be expensive and prone to significant errors, particularly at sea.

Summary based on 6 sources


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