Instance Embedding Transfer to Unsupervised Video Object Segmentation

Siyang Li(Southern California University for Professional Studies), Bryan Seybold(Google (United States)), Alexey Vorobyov(Google (United States)), Alireza Fathi(Google (United States)), Qin Huang(University of Southern California), C.‐C. Jay Kuo(Southern California University for Professional Studies)
Unknown
June 1, 2018
Cited by 112

Abstract

We propose a method for unsupervised video object segmentation by transferring the knowledge encapsulated in image-based instance embedding networks. The instance embedding network produces an embedding vector for each pixel that enables identifying all pixels belonging to the same object. Though trained on static images, the instance embeddings are stable over consecutive video frames, which allows us to link objects together over time. Thus, we adapt the instance networks trained on static images to video object segmentation and incorporate the embeddings with objectness and optical flow features, without model retraining or online fine-tuning. The proposed method outperforms state-of-the-art unsupervised segmentation methods in the DAVIS dataset and the FBMS dataset.


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