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Miu Hirano and other Japanese female players in the table tennis super attract attention, is it to raise wolves or focus on project development?

Around the participation of three Japanese female players, including Miu Hirano, who won the women's team medal in table tennis for two consecutive Olympic Games, to participate in the Chinese Table Tennis Super League, there are voices of support and opposition in China. While reporting the details, some media called for "'closed-door and closed-door activities' that are definitely not a good thing."

Miu Hirano

In addition to Miyu Hirano, there are also two Japanese table tennis women's team players, Miwa Zhangmoto and Miyu Kihara, who decided to participate in the new season of the Chinese Table Tennis Super League from this month. Miyu Hirano will enter Sun Yingsha's Shenzhen University team, 16-year-old Zhang Benmeihe will participate in Chengdu High-tech Ruoshuiju, and Miyu Kihara will enter the Huaxin team of Huangshi Base, where Shen Yubin, the first sister of Han Ping Pong, is located.

But this year's table tennis Super League has caused controversy. Some fans in China expressed concern that some fans in China expressed concern that the participation of Japanese players was related to the "wolf breeding plan" aimed at raising the level. In 2017, the Japanese refused to participate, and on the other hand, Germany's Ocharov participated as an outside association player, seemingly with the background of improving his strength.

There is also an opinion that the Super League, as the highest level of table tennis, is not only responsible for training domestic players, but also for the revitalization of table tennis. Only by bringing in high-level players from abroad can the league truly become a world-class league, as a way to appeal for its usefulness to the development of the sport.

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