2021
DOI: 10.1155/2021/6646187
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Image Recognition Technology in Texture Identification of Marine Sediment Sonar Image

Abstract: Through the recognition of ocean sediment sonar images, the texture in the image can be classified, which provides an important basis for the classification of ocean sediment. Aiming at the problems of low efficiency, waste of human resources, and low accuracy in the traditional manual side-scan sonar image discrimination, this paper studies the application of image recognition technology in sonar image substrate texture discrimination, which is popular in many fields. At the same time, considering the scale c… Show more

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Cited by 9 publications
(4 citation statements)
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“…Compared with other neural networks and machine learning algorithms, YOLOv3 has a faster detection speed on pedestrian detection tasks, which meets the real-time applications 22 . In addition, YOLOv3 optimizes the objective function design and introduces multi-scale prediction, which can better handle pedestrians of various sizes and shapes, and weaken the detection performance degradation caused by scale changes 9 , 23 . Meanwhile, compared with the previous version of YOLO, YOLOv3 has added presets for more types of anchor boxes, which can better adapt to pedestrians in various postures, and correspondingly improve the detection accuracy 24 .…”
Section: Improved Yolo Lightweight Model Design For Intelligent Stati...mentioning
confidence: 99%
See 1 more Smart Citation
“…Compared with other neural networks and machine learning algorithms, YOLOv3 has a faster detection speed on pedestrian detection tasks, which meets the real-time applications 22 . In addition, YOLOv3 optimizes the objective function design and introduces multi-scale prediction, which can better handle pedestrians of various sizes and shapes, and weaken the detection performance degradation caused by scale changes 9 , 23 . Meanwhile, compared with the previous version of YOLO, YOLOv3 has added presets for more types of anchor boxes, which can better adapt to pedestrians in various postures, and correspondingly improve the detection accuracy 24 .…”
Section: Improved Yolo Lightweight Model Design For Intelligent Stati...mentioning
confidence: 99%
“…Current technologies show certain limitations when dealing with the flow of people in large-scale public places, especially in terms of statistical accuracy and computational efficiency 8 . Traditional models face many challenges, such as model bloat, high computing power requirements, and slow processing speed 9 . In addition, for public places with complex backgrounds and dense crowds, problems such as real-time tracking accuracy still exist.…”
Section: Introductionmentioning
confidence: 99%
“…After feature extraction of moving image, because the dimension of feature image cannot be determined, it is necessary to select improved neural network parameters, carry out dimension reduction processing, connect sampling layers 17 , reduce the complexity of dimension reduction calculation, shorten the dimension reduction range, and improve the calculation accuracy. At this time, we can use mathematical methods to describe the Taekwondo moving image 18 , and use formula ( 2 ) to calculate the corresponding gray value of pixels …”
Section: Design Of Wearable Sensor Of Internet Of Things Based On Hyb...mentioning
confidence: 99%
“…Jeong et al [14] proposed an improved version of the SSD algorithm called R-SSD, which solves the problem of repeated target detection in the original SSD algorithm. Sun et al [15] fused the texture recognition algorithm for sonar images with the YOLO algorithm, achieving better results in marine sediment detection compared to the original algorithm. To address the issue of blurriness and poor feature extraction capabilities caused by significant variations in size in underwater photographs, Lian et al [16] made modifications to the YOLOv5 algorithm and implemented the CBAM attention mechanism to improve detection accuracy.…”
Section: Introductionmentioning
confidence: 99%