Memory-Constrained Semantic Segmentation for Ultra-High Resolution UAV Imagery
Qi Li, Jiaxin Cai, Yuanlong Yu, Jason Gu, Jia Pan, Wenxi Liu

TL;DR
This paper introduces a memory-efficient framework for high-quality semantic segmentation of ultra-high resolution UAV images, overcoming GPU memory constraints by local inference and novel querying techniques.
Contribution
It proposes a novel spatial-guided high-resolution query module and memory-based interaction scheme for effective segmentation under strict memory limitations.
Findings
Achieves superior segmentation performance on public benchmarks.
Operates effectively with limited GPU memory.
Outperforms existing downscaling approaches.
Abstract
Amidst the swift advancements in photography and sensor technologies, high-definition cameras have become commonplace in the deployment of Unmanned Aerial Vehicles (UAVs) for diverse operational purposes. Within the domain of UAV imagery analysis, the segmentation of ultra-high resolution images emerges as a substantial and intricate challenge, especially when grappling with the constraints imposed by GPU memory-restricted computational devices. This paper delves into the intricate problem of achieving efficient and effective segmentation of ultra-high resolution UAV imagery, while operating under stringent GPU memory limitation. The strategy of existing approaches is to downscale the images to achieve computationally efficient segmentation. However, this strategy tends to overlook smaller, thinner, and curvilinear regions. To address this problem, we propose a GPU memory-efficient and…
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Taxonomy
TopicsAdvanced Image and Video Retrieval Techniques · Advanced Neural Network Applications · Domain Adaptation and Few-Shot Learning
