Movielogr

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Rating: 6.5 stars

Tags

Netflix pinku Japan

Seen 1 time

Seen on: 10/23/2012

View on: IMDb | TMDb

Cruel Restaurant (2008)

Directed by Kôji Kawano

Horror

Most recently watched by sleestakk

Overview

Just what is the mystery ingredient in the pot stickers at Togen Restaurant? Those who look for the answer have a habit of disappearing. So when body parts start washing up on the beach, police trace the murders to Togen’s seemingly innocent owner. But the slaughter of a few curious fans is the least shocking secret coming out of Togen’s kitchen! Mihiro, Sakae Yamazaki, Katsuya Naruse and Yusuke Iwata star in this pitch-black comic horror tale.

Length 75 minutes

Actors

Mihiro | Sakae Yamazaki | Katsuya Naruse | Yûsuke Iwata | Miho Funatsu | Kêsuke | Toshiyuki Teranaka | Chihiro Koganezaki

Viewing Notes

Interesting softcore, modern pink horror film. Typically don’t see straight horror mixed w/softcore like this (at least I haven’t). More thriller usually for these so it made this more interesting and mostly fun. And unpredictable. Mihiro is a cute girl.

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