Litcius/Paper detail

Marine Organism Detection and Classification from Underwater Vision Based on the Deep CNN Method

Fenglei Han, Jingzheng Yao, Haitao Zhu, Chunhui Wang

2020Mathematical Problems in Engineering79 citationsDOIOpen Access PDF

Abstract

Seabed fishing depends on humans in common, for instance, the sea cucumber, sea urchin, and scallop fishing, which is always a very dangerous task. Considering the underwater complex environment conditions such as low temperature, dim vision, and high pressure, collecting the marine products using underwater robots is commonly regarded as a feasible solution. The key technique of the underwater robot development is to detect and locate the main target from underwater vision. This research is based on the deep convolutional neural network (CNN) to realize the target recognition from underwater vision. The RPN (Region Proposal Network) is used to optimize the feature extraction capability. Deep learning dataset is prepared using an underwater video obtained from a sea cucumber fishing ROV (Remote Operated Vehicle). The inspiration of the network structure and the improvements come from the Faster RCNN and Hypernet method, and for the underwater dataset, the method proposed in this paper shows a good performance of recall and object detection accuracy. The detection runs with a speed of 17 fps on a GPU, which is applicable to be used for real-time processing.

Topics & Concepts

UnderwaterConvolutional neural networkArtificial intelligenceComputer scienceRemotely operated underwater vehicleFeature extractionComputer visionDeep learningObject detectionMarine engineeringTask (project management)RobotPattern recognition (psychology)EngineeringMobile robotGeologyOceanographySystems engineeringWater Quality Monitoring TechnologiesAdvanced Neural Network ApplicationsIchthyology and Marine Biology
Marine Organism Detection and Classification from Underwater Vision Based on the Deep CNN Method | Litcius