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Generating synthetic dataset for scale-invariant instance segmentation of food materials based upon mask r-cnn
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Publication Year
2021-01-01
Publisher
Institute of Control, Robotics and Systems
Citation
Journal of Institute of Control, Robotics and Systems, Vol.27, pp.502-509
Keyword
Food materialsInstance segmentationScale-invariantSynthetic dataset
Mesh Keyword
Data augmentationGeneration methodMultiple objectsReal time imagesSegmentation algorithmsSegmentation methodsSegmentation performanceState of the art
All Science Classification Codes (ASJC)
SoftwareControl and Systems EngineeringApplied Mathematics
Abstract
This work proposes a scale-invariant instance segmentation method for images acquired from a real-time camera. It is challenging to detect and segment an exact shape by removing background (named as an instance) of a deformable semi-solid object such as food materials. In this work, we consider the segmentation with the cases of various sizes of an object and multiple objects overlapped with each other. To do this, we address an augmented dataset generation method, which extends dataset from small number of base objects, a fundamental dataset. Our method is based upon data augmentation, which is well known that it is an effective way to improve the segmentation performance. Our method addresses the generation of dataset with various scales using small number of original dataset. It is relatively simple in method but provides better performance. We also propose how to choose a target object (food material) with its centroid for grasping. Through diverse experiments using real-time images, we demonstrate that the proposed algorithm segments scale-invariant object maskss and is successfully implemented for a robotic hand to grasp a food material. It is also compared with the state-of-the-art segmentation algorithm. As a result, the proposed method shows 74%, 85%, and 78% in accuracy, recall, and precision while the original datasett shows 67%, 79%, and 70%, respectively.
ISSN
1976-5622
Language
eng
URI
https://dspace.ajou.ac.kr/dev/handle/2018.oak/32220
DOI
https://doi.org/10.5302/j.icros.2021.21.0045
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Type
Article
Funding
* Corresponding Author Manuscript received May 9, 2021; revised June 11, 2021; accepted June 16, 2021 \ubbfc\ud604\uc815: \uc544\uc8fc\ub300\ud559\uad50 \uc735\ud569\uc2dc\uc2a4\ud15c\uacf5\ud559\uacfc \uad50\uc218(solusea@ajou.ac.kr, 0000-0002-9033-7023) \u203b This material was based upon work supported by \Leaders in Industry-university Cooperation+\ Project through the LINC+ funded by Gyeonggi-do. It was also partly supported by the National Research Foundation of Korea (NRF) grant funded by the Korea government (MSIT) (No. S-2021-A0403-00210).
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Min, Hyeun Jeong 민현정
Department of Integrative Systems Engineering
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