CVApr 14

On Efficient Variants of Segment Anything Model: A Survey

arXiv:2410.0496091.131 citationsh-index: 9
Predicted impact top 26% in CV · last 90 daysOriginality Synthesis-oriented
AI Analysis

For researchers and practitioners needing to deploy SAM on edge devices, this survey organizes and compares efficiency improvements, but it is an incremental review of existing methods.

This survey reviews efficient variants of the Segment Anything Model (SAM) that reduce computational and resource demands for deployment in resource-limited environments, categorizing acceleration strategies and providing a unified evaluation across benchmarks.

The Segment Anything Model (SAM) is a foundational model for image segmentation tasks, known for its strong generalization across diverse applications. However, its impressive performance comes with significant computational and resource demands, making it challenging to deploy in resource-limited environments such as edge devices. To address this, a variety of SAM variants have been proposed to enhance efficiency while keeping accuracy. This survey provides the first comprehensive review of these efficient SAM variants. We begin by exploring the motivations driving this research. We then present core techniques used in SAM and model acceleration. This is followed by a detailed exploration of SAM acceleration strategies, categorized by approach, and a discussion of several future research directions. Finally, we offer a unified and extensive evaluation of these methods across various hardware, assessing their efficiency and accuracy on representative benchmarks, and providing a clear comparison of their overall performance.

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