Litcius/Paper detail

Sea-Surface Object Detection Based on Electro-Optical Sensors: A Review

Hongguang Lyu, Zeyuan Shao, Tao Cheng, Yong Yin, Xiaowei Gao

2022IEEE Intelligent Transportation Systems Magazine44 citationsDOIOpen Access PDF

Abstract

Sea-surface object detection is critical for navigation safety of autonomous ships. Electro-optical (EO) sensors, such as video cameras, complement radar on board in detecting small obstacle sea-surface objects. Traditionally, researchers have used horizon detection, background subtraction, and foreground segmentation techniques to detect sea-surface objects. Recently, deep learning-based object detection technologies have been gradually applied to sea-surface object detection. This article demonstrates a comprehensive overview of sea-surface object-detection approaches where the advantages and drawbacks of each technique are compared, covering four essential aspects: EO sensors and image types, traditional object-detection methods, deep learning methods, and maritime datasets collection. In particular, sea-surface object detections based on deep learning methods are thoroughly analyzed and compared with highly influential public datasets introduced as benchmarks to verify the effectiveness of these approaches. The article also proposes the direction of future research for sea-surface object detection based on EO sensors.

Topics & Concepts

Object detectionArtificial intelligenceComputer visionBackground subtractionComputer scienceDeep learningObstacleObject (grammar)SegmentationRemote sensingRadarImage segmentationGeologyGeographyPixelTelecommunicationsArchaeologyMaritime Navigation and SafetyOil Spill Detection and MitigationAdvanced Neural Network Applications
Sea-Surface Object Detection Based on Electro-Optical Sensors: A Review | Litcius