NECVMay 3, 2024

TinySeg: Model Optimizing Framework for Image Segmentation on Tiny Embedded Systems

arXiv:2405.01857v13 citationsh-index: 2LCTES
Originality Incremental advance
AI Analysis

This work addresses memory efficiency for image segmentation on resource-constrained embedded systems, representing an incremental improvement over existing frameworks.

The paper tackles the problem of high peak memory usage in image segmentation models on tiny embedded systems by proposing TinySeg, a model optimizing framework that reduces peak memory usage by 39.3%.

Image segmentation is one of the major computer vision tasks, which is applicable in a variety of domains, such as autonomous navigation of an unmanned aerial vehicle. However, image segmentation cannot easily materialize on tiny embedded systems because image segmentation models generally have high peak memory usage due to their architectural characteristics. This work finds that image segmentation models unnecessarily require large memory space with an existing tiny machine learning framework. That is, the existing framework cannot effectively manage the memory space for the image segmentation models. This work proposes TinySeg, a new model optimizing framework that enables memory-efficient image segmentation for tiny embedded systems. TinySeg analyzes the lifetimes of tensors in the target model and identifies long-living tensors. Then, TinySeg optimizes the memory usage of the target model mainly with two methods: (i) tensor spilling into local or remote storage and (ii) fused fetching of spilled tensors. This work implements TinySeg on top of the existing tiny machine learning framework and demonstrates that TinySeg can reduce the peak memory usage of an image segmentation model by 39.3% for tiny embedded systems.

Code Implementations1 repo
Foundations

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