TeraDeep Image Parser
Table of Contents:
00:00 - Title
00:04 - Details
00:09 - Fridge
00:41 - Child-bed
01:05 - Save time
01:10 - Dog
01:24 - Fridge (2)
01:31 - Microwave
01:37 - Cup
01:46 - Rug
01:54 - Shoes
01:56 - Table
02:10 - Window-shade
02:16 - Real world
02:21 - Writing-instrument
02:30 - Computer and screen
02:52 - Shoes (2)
02:56 - Cup (2)
03:21 - Box and table
03:31 - Credits
Видео TeraDeep Image Parser канала Alfredo Canziani
00:00 - Title
00:04 - Details
00:09 - Fridge
00:41 - Child-bed
01:05 - Save time
01:10 - Dog
01:24 - Fridge (2)
01:31 - Microwave
01:37 - Cup
01:46 - Rug
01:54 - Shoes
01:56 - Table
02:10 - Window-shade
02:16 - Real world
02:21 - Writing-instrument
02:30 - Computer and screen
02:52 - Shoes (2)
02:56 - Cup (2)
03:21 - Box and table
03:31 - Credits
Видео TeraDeep Image Parser канала Alfredo Canziani
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