Presentation 2022-02-18
Training Data Generation Method for Object Recognition from Free Direction
Masatomo Ozeki, Ayaka Kumeta, Tsukasa Kudo,
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Abstract(in Japanese) (See Japanese page)
Abstract(in English) Object recognition utilizing deep learning is widely applied in various fields. On the other hand, the preparation of training data for deep learning often requires a large load and becomes an obstacle to applying it. In particular, to recognize the target object from free directions, training data from the various direction is required, and the load becomes higher. In this study, to efficiently generate such training data, we propose two approaches. One is a method of automatically extracting training data from continuously shot videos; the other is a method of automatically generating it by computer graphics (CG). Furthermore, we evaluate the training data generation efficiency and object recognition accuracy. And, it is shown that the former method is effective when the environment is specified; using both methods together is effective when the environment is not specified, namely various environments.
Keyword(in Japanese) (See Japanese page)
Keyword(in English) deep learning / object recognition / training data generation / computer graphics / CG / video
Paper # SWIM2021-38
Date of Issue 2022-02-11 (SWIM)

Conference Information
Committee SWIM
Conference Date 2022/2/18(1days)
Place (in Japanese) (See Japanese page)
Place (in English) Online
Topics (in Japanese) (See Japanese page)
Topics (in English)
Chair Kenji Saotome(Hosei Univ.)
Vice Chair Akihiro Hayashi(Shizuoka Inst. of Science and Tech.)
Secretary Akihiro Hayashi(Tokyo Univ. of Science)
Assistant Tsukasa Kudo(Shizuoka Inst. of Science and Tech.) / Kokichi Tsuji(Aichi Pref. Univ.)

Paper Information
Registration To Technical Committee on Software Interprise Modeling
Language JPN
Title (in Japanese) (See Japanese page)
Sub Title (in Japanese) (See Japanese page)
Title (in English) Training Data Generation Method for Object Recognition from Free Direction
Sub Title (in English) Two Approaches Utilizing Video and CG
Keyword(1) deep learning
Keyword(2) object recognition
Keyword(3) training data generation
Keyword(4) computer graphics
Keyword(5) CG
Keyword(6) video
1st Author's Name Masatomo Ozeki
1st Author's Affiliation Shizuoka Institute of Science and Technology(SIST)
2nd Author's Name Ayaka Kumeta
2nd Author's Affiliation Shizuoka Institute of Science and Technology(SIST)
3rd Author's Name Tsukasa Kudo
3rd Author's Affiliation Shizuoka Institute of Science and Technology(SIST)
Date 2022-02-18
Paper # SWIM2021-38
Volume (vol) vol.121
Number (no) SWIM-372
Page pp.pp.51-58(SWIM),
#Pages 8
Date of Issue 2022-02-11 (SWIM)