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Lightweight Low-Power U-Net Architecture for Semantic Segmentation

  • 03-12-2024
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Abstract

The article discusses the development of a lightweight, low-power U-Net architecture for semantic segmentation. It focuses on reducing the computational complexity and memory requirements of deep learning models, particularly for edge device deployment. The proposed architecture utilizes quantization and filter pruning techniques to achieve these goals. Quantization converts model weights to powers of two, reducing the bit-width and memory usage. Filter pruning removes less important filters, further optimizing the model's efficiency. The implementation on an FPGA demonstrates significant improvements in energy consumption and performance, making it a promising solution for real-time semantic segmentation tasks.

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Title
Lightweight Low-Power U-Net Architecture for Semantic Segmentation
Authors
Chaitanya Modiboyina
Indrajit Chakrabarti
Soumya Kanti Ghosh
Publication date
03-12-2024
Publisher
Springer US
Published in
Circuits, Systems, and Signal Processing / Issue 4/2025
Print ISSN: 0278-081X
Electronic ISSN: 1531-5878
DOI
https://doi.org/10.1007/s00034-024-02920-x
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