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강건한 CNN기반 수중 물체 인식을 위한 이미지 합성과 자동화된 Annotation ToolSynthesizing Image and Automated Annotation Tool for CNN based Under Water Object Detection

Other Titles
Synthesizing Image and Automated Annotation Tool for CNN based Under Water Object Detection
Authors
전명환이영준신영식장혜수여태경김아영
Issue Date
6월-2019
Publisher
한국로봇학회
Keywords
Deep learning; Data annotation; Object detection; 3D CAD model; Underwater
Citation
한국로봇학회 논문지, v.14, no.2, pp 139 - 149
Pages
11
Journal Title
한국로봇학회 논문지
Volume
14
Number
2
Start Page
139
End Page
149
URI
https://www.kriso.re.kr/sciwatch/handle/2021.sw.kriso/9270
DOI
10.7746/jkros.2019.14.2.139
Abstract
In this paper, we present auto-annotation tool and synthetic dataset using 3D CAD model for deep learning based object detection. To be used as training data for deep learning methods, class, segmentation, bounding-box, contour, and pose annotations of the object are needed. We propose an automated annotation tool and synthetic image generation. Our resulting synthetic dataset reflects occlusion between objects and applicable for both underwater and in-air environments. To verify our synthetic dataset, we use MASK R-CNN as a state-of-the-art method among object detection model using deep learning. For experiment, we make the experimental environment reflecting the actual underwater environment. We show that object detection model trained via our dataset show significantly accurate results and robustness for the underwater environment. Lastly, we verify that our synthetic dataset is suitable for deep learning model for the underwater environments.
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