Training instance segmentation neural network with synthetic datasets for crop seed phenotyping
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Fumio Okura | Hiroyuki Tsuji | Satoshi Okada | Yosuke Toda | Jun Ito | Toshinori Kinoshita | Daisuke Saisho | T. Kinoshita | Fumio Okura | Y. Toda | D. Saisho | Jun Ito | Satoshi Okada | Hiroyuki Tsuji
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