Exploring the Semi-supervised Video Object Segmentation Problem from a Cyclic Perspective

11/02/2021
by   Yuxi Li, et al.
4

Modern video object segmentation (VOS) algorithms have achieved remarkably high performance in a sequential processing order, while most of currently prevailing pipelines still show some obvious inadequacy like accumulative error, unknown robustness or lack of proper interpretation tools. In this paper, we place the semi-supervised video object segmentation problem into a cyclic workflow and find the defects above can be collectively addressed via the inherent cyclic property of semi-supervised VOS systems. Firstly, a cyclic mechanism incorporated to the standard sequential flow can produce more consistent representations for pixel-wise correspondance. Relying on the accurate reference mask in the starting frame, we show that the error propagation problem can be mitigated. Next, a simple gradient correction module, which naturally extends the offline cyclic pipeline to an online manner, can highlight the high-frequent and detailed part of results to further improve the segmentation quality while keeping feasible computation cost. Meanwhile such correction can protect the network from severe performance degration resulted from interference signals. Finally we develop cycle effective receptive field (cycle-ERF) based on gradient correction process to provide a new perspective into analyzing object-specific regions of interests. We conduct comprehensive comparison and detailed analysis on challenging benchmarks of DAVIS16, DAVIS17 and Youtube-VOS, demonstrating that the cyclic mechanism is helpful to enhance segmentation quality, improve the robustness of VOS systems, and further provide qualitative comparison and interpretation on how different VOS algorithms work. The code of this project can be found at https://github.com/lyxok1/STM-Training

READ FULL TEXT

page 3

page 5

page 12

page 13

research
10/23/2020

Delving into the Cyclic Mechanism in Semi-supervised Video Object Segmentation

In this paper, we address several inadequacies of current video object s...
research
12/06/2021

Reliable Propagation-Correction Modulation for Video Object Segmentation

Error propagation is a general but crucial problem in online semi-superv...
research
09/30/2019

CapsuleVOS: Semi-Supervised Video Object Segmentation Using Capsule Routing

In this work we propose a capsule-based approach for semi-supervised vid...
research
07/02/2022

Towards Robust Video Object Segmentation with Adaptive Object Calibration

In the booming video era, video segmentation attracts increasing researc...
research
10/18/2022

Decoupling Features in Hierarchical Propagation for Video Object Segmentation

This paper focuses on developing a more effective method of hierarchical...
research
04/09/2018

Blazingly Fast Video Object Segmentation with Pixel-Wise Metric Learning

This paper tackles the problem of video object segmentation, given some ...
research
08/22/2022

SWEM: Towards Real-Time Video Object Segmentation with Sequential Weighted Expectation-Maximization

Matching-based methods, especially those based on space-time memory, are...

Please sign up or login with your details

Forgot password? Click here to reset