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Hibikino-Musashi@Home 2023 Team Description Paper
Shiba, Tomoya, Mizutani, Akinobu, Yano, Yuga, Ono, Tomohiro, Tokuno, Shoshi, Kanaoka, Daiju, Fukuda, Yukiya, Amano, Hayato, Koresawa, Mayu, Sakai, Yoshifumi, Takemoto, Ryogo, Tamai, Katsunori, Nakahara, Kazuo, Hayashi, Hiroyuki, Fujimatsu, Satsuki, Mizoguchi, Yusuke, Anraku, Moeno, Suzuka, Mayo, Shen, Lu, Maeda, Kohei, Matsuzaki, Fumiya, Matsumoto, Ikuya, Murai, Kazuya, Isomoto, Kosei, Minje, Kim, Tanaka, Yuichiro, Morie, Takashi, Tamukoh, Hakaru
This paper describes an overview of the techniques of Hibikino-Musashi@Home, which intends to participate in the domestic standard platform league. The team has developed a dataset generator for the training of a robot vision system and an open-source development environment running on a human support robot simulator. The robot system comprises self-developed libraries including those for motion synthesis and open-source software works on the robot operating system. The team aims to realize a home service robot that assists humans in a home, and continuously attend the competition to evaluate the developed system. The brain-inspired artificial intelligence system is also proposed for service robots which are expected to work in a real home environment.
TRAIL Team Description Paper for RoboCup@Home 2023
Tsuji, Chikaha, Komukai, Dai, Shirasaka, Mimo, Wada, Hikaru, Omija, Tsunekazu, Horo, Aoi, Furuta, Daiki, Yamaguchi, Saki, Ikoma, So, Tsunashima, Soshi, Kobayashi, Masato, Ishimoto, Koki, Ikeda, Yuya, Matsushima, Tatsuya, Iwasawa, Yusuke, Matsuo, Yutaka
Our team, TRAIL, consists of AI/ML laboratory members from The University of Tokyo. We leverage our extensive research experience in state-of-the-art machine learning to build general-purpose in-home service robots. We previously participated in two competitions using Human Support Robot (HSR): RoboCup@Home Japan Open 2020 (DSPL) and World Robot Summit 2020, equivalent to RoboCup World Tournament. Throughout the competitions, we showed that a data-driven approach is effective for performing in-home tasks. Aiming for further development of building a versatile and fast-adaptable system, in RoboCup @Home 2023, we unify three technologies that have recently been evaluated as components in the fields of deep learning and robot learning into a real household robot system. In addition, to stimulate research all over the RoboCup@Home community, we build a platform that manages data collected from each site belonging to the community around the world, taking advantage of the characteristics of the community.