VIXX and MONSTA X battled each other on 'Overwatch'

Two of the famous South Korean boy band idols battled each other yesterday October 17, 2016 on SBS mobile brand MOBIDIC - not on singing and dancing, but on video game Overwatch.

VIXX and MONSTA X have assured fans before the game has happened that they are best when it comes to the game Overwatch. For instance, VIXX's Hyuk and Hongbin said while filming on October 5 that they have met MONSTA X on JungDaeMan when they came back, but they are better than them at "Overwatch". No matter which character they choose, they are going to get an arrow through the head, they further claimed.

On the other hand, Minhyuk, Kihyun, and I.M. of MONSTA X also said that they have played many idols in Overwatch, and went against "Hanzo masters," "Lucio masters," and more but none of them were actual players. They further claimed that they will let fans see their unique strategy that they gained from playing at a PC Café.

PD gave more favor to VIXX when commented: "It was a match where you could really see Hongbin's skills as the 'Hanzo master' as he's said to be."

The two boy bands showed their teamwork not only in music, but also in video games. As many enthusiasts know, Overwatch required good skills and team members working hand in hand in order to win. Six members each team is needed to play which is exact for both bands. They will select each of their members a character to play. Yesterday fans have witnessed how good each of their favorite boy bands are as far as offense, defense, tank, and support is concerned.

VIXX, the "Depend on Me" hitmakers, have made successful world tours recently. Likewise, MONSTA X returned in early October with their fourth mini album and second part of The Clan series, titled The Clan 2.5 Pt. 2 'GUILTY'. The extended play was released on October 4, with the first single "Fighter", along with an accompanying music video.

Tags
Overwatch
VIXX
monsta x
musical performance
SBS mobile brand MOBIDIC
Join the Discussion

Latest Photo Gallery

Real Time Analytics