Movielogr

movie poster

Rating: 6.5 stars

Tags

short film

Seen 1 time

Seen on: 02/12/2009

View on: IMDb | TMDb

Cartoon Noir (1999)

Directed by Jiří Barta, Pedro Serrazina, Piotr Dumała, Suzan Pitt, Paul Vester, Julie Zammarchi

Animation | Adventure | Science Fiction

Most recently watched by sleestakk

Overview

Six animated shorts eschew traditional animation by featuring supernatural elements and darker themes, such as alien snatchings, life among mannequins and a spiritual rebirth. Among the films are “Ape,” which features a couple fighting over a cooked monkey every night; “The Story of the Cat and the Moon,” which is a tale of unrequited love; and “Gentle Spirit,” which is based on a Fyodor Dostoyevsky story.

Length 83 minutes

Actors

Viewing Notes

Watched this compilation of six animated shorts… some very good and others not so much. Mixed bag but very interesting.

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