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Main Authors: Fu, Ruigang, Hu, Qingyong, Dong, Xiaohu, Gao, Yinghui, Li, Biao, Zhong, Ping
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2410.22139
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author Fu, Ruigang
Hu, Qingyong
Dong, Xiaohu
Gao, Yinghui
Li, Biao
Zhong, Ping
author_facet Fu, Ruigang
Hu, Qingyong
Dong, Xiaohu
Gao, Yinghui
Li, Biao
Zhong, Ping
contents As a fundamental operation in modern machine vision models, feature upsampling has been widely used and investigated in the literatures. An ideal upsampling operation should be lightweight, with low computational complexity. That is, it can not only improve the overall performance but also not affect the model complexity. Content-aware Reassembly of Features (CARAFE) is a well-designed learnable operation to achieve feature upsampling. Albeit encouraging performance achieved, this method requires generating large-scale kernels, which brings a mass of extra redundant parameters, and inherently has limited scalability. To this end, we propose a lightweight upsampling operation, termed Dynamic Lightweight Upsampling (DLU) in this paper. In particular, it first constructs a small-scale source kernel space, and then samples the large-scale kernels from the kernel space by introducing learnable guidance offsets, hence avoiding introducing a large collection of trainable parameters in upsampling. Experiments on several mainstream vision tasks show that our DLU achieves comparable and even better performance to the original CARAFE, but with much lower complexity, e.g., DLU requires 91% fewer parameters and at least 63% fewer FLOPs (Floating Point Operations) than CARAFE in the case of 16x upsampling, but outperforms the CARAFE by 0.3% mAP in object detection. Code is available at https://github.com/Fu0511/Dynamic-Lightweight-Upsampling.
format Preprint
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institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Lighten CARAFE: Dynamic Lightweight Upsampling with Guided Reassemble Kernels
Fu, Ruigang
Hu, Qingyong
Dong, Xiaohu
Gao, Yinghui
Li, Biao
Zhong, Ping
Computer Vision and Pattern Recognition
As a fundamental operation in modern machine vision models, feature upsampling has been widely used and investigated in the literatures. An ideal upsampling operation should be lightweight, with low computational complexity. That is, it can not only improve the overall performance but also not affect the model complexity. Content-aware Reassembly of Features (CARAFE) is a well-designed learnable operation to achieve feature upsampling. Albeit encouraging performance achieved, this method requires generating large-scale kernels, which brings a mass of extra redundant parameters, and inherently has limited scalability. To this end, we propose a lightweight upsampling operation, termed Dynamic Lightweight Upsampling (DLU) in this paper. In particular, it first constructs a small-scale source kernel space, and then samples the large-scale kernels from the kernel space by introducing learnable guidance offsets, hence avoiding introducing a large collection of trainable parameters in upsampling. Experiments on several mainstream vision tasks show that our DLU achieves comparable and even better performance to the original CARAFE, but with much lower complexity, e.g., DLU requires 91% fewer parameters and at least 63% fewer FLOPs (Floating Point Operations) than CARAFE in the case of 16x upsampling, but outperforms the CARAFE by 0.3% mAP in object detection. Code is available at https://github.com/Fu0511/Dynamic-Lightweight-Upsampling.
title Lighten CARAFE: Dynamic Lightweight Upsampling with Guided Reassemble Kernels
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2410.22139