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Tracking Anything with Decoupled Video Segmentation paper page: Training data for video segmentation are expensive to annotate. This impedes extensions of end-to-end algorithms to new video segmentation tasks, especially in large-vocabulary settings. To 'track anything' without training on video data for every individual task, we develop a decoupled video...

305,560 Aufrufe • vor 2 Jahren •via X (Twitter)

10 Kommentare

Profilbild von Enrique Moreno
Enrique Morenovor 2 Jahren

Next phase is to track the traffic in India. If you can do that, you have perfected the technology.

Profilbild von kache
kachevor 2 Jahren

project page

Profilbild von B0tak 👺 Zaddy
B0tak 👺 Zaddyvor 2 Jahren

A lot of word salad to me. Should of listened more at school.

Profilbild von Christopher Moonlight Productions
Christopher Moonlight Productionsvor 2 Jahren

Can it be an extension of Automatic 1111? This is rad.

Profilbild von Alessandro Lamberti
Alessandro Lambertivor 2 Jahren

Is the code available? Seems amazing!

Profilbild von Egido Val
Egido Valvor 2 Jahren

wow.

Profilbild von T
Tvor 2 Jahren

poor beings

Profilbild von WHNBH
WHNBHvor 2 Jahren

@SaveToNotion #tweet #ai

Profilbild von Max Ivy
Max Ivyvor 2 Jahren

We should consider the computational overhead of using bi-directional propagation in real-time applications. How should it scale with longer videos or higher resolutions?

Profilbild von Not Financial Advice
Not Financial Advicevor 2 Jahren

What do the numbers represent,,,, .71,,, .57, etc?

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Bo Wang

178,451 Aufrufe • vor 1 Jahr