Shallow Features Matter: Hierarchical Memory with Heterogeneous Interaction for Unsupervised Video Object Segmentation
Zheng Xiangyu, He Songcheng, Li Wanyun, Li Xiaoqiang, Zhang Wei

TL;DR
This paper introduces a hierarchical memory architecture with heterogeneous interaction for unsupervised video object segmentation, effectively combining shallow and high-level features to improve segmentation accuracy.
Contribution
It proposes a novel hierarchical memory design and heterogeneous interaction mechanism to incorporate both pixel-level and semantic features, addressing limitations of existing high-level feature reliance.
Findings
Achieves state-of-the-art results on UVOS benchmarks.
Demonstrates robustness across different backbone networks.
Effectively balances pixel and semantic information for precise segmentation.
Abstract
Unsupervised Video Object Segmentation (UVOS) aims to predict pixel-level masks for the most salient objects in videos without any prior annotations. While memory mechanisms have been proven critical in various video segmentation paradigms, their application in UVOS yield only marginal performance gains despite sophisticated design. Our analysis reveals a simple but fundamental flaw in existing methods: over-reliance on memorizing high-level semantic features. UVOS inherently suffers from the deficiency of lacking fine-grained information due to the absence of pixel-level prior knowledge. Consequently, memory design relying solely on high-level features, which predominantly capture abstract semantic cues, is insufficient to generate precise predictions. To resolve this fundamental issue, we propose a novel hierarchical memory architecture to incorporate both shallow- and high-level…
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