通过轻量级定制非线性变换网络增强弱光图像效果

IF 0.7 4区 工程技术 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC Electronics Letters Pub Date : 2024-10-09 DOI:10.1049/ell2.70053
Yang Li
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引用次数: 0

摘要

基于卷积神经网络(CNN)的模型在弱光图像增强方面取得了重大进展。然而,许多现有模型拥有大量参数,不适合在终端设备上使用。此外,图像中亮度、对比度和颜色的调整往往是非线性的,而卷积并不是捕捉图像数据中复杂非线性关系的最佳方法。为了解决这些问题,我们提出了一种基于端到端定制非线性变换网络(CNTNet)的模型。CNTNet 将定制非线性变换层与 CNN 层相结合,以实现图像对比度和细节增强。该模型中的 CNT 层引入了多个尺度的变换参数,可在不同范围内处理输入图像。CNTNet 通过堆叠多个非线性变换层和卷积层来逐步处理图像,同时整合残差连接来捕捉和利用微妙的图像特征。通过卷积层生成最终输出,从而获得增强图像。CNTNet 的实验结果表明,在保持与主流模型相当的图像质量评估指标水平的同时,它将参数数量大幅减少到仅 2K。
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Low-light image enhancement via lightweight custom non-linear transform network

Convolutional neural network (CNN)-based models have shown significant progress in low light image enhancement. However, many existing models possess a large number of parameters, making them unsuitable for deployment on terminal devices. Moreover, adjustments to brightness, contrast, and colour in images are often non-linear, and convolution is not the best at capturing complex non-linear relationships in image data. To address these issues, a model based on an end-to-end custom non-linear transform network (CNTNet) is proposed. CNTNet combines a custom non-linear transform layer with CNN layers to achieve image contrast and detail enhancement. The CNT layer in this model introduces transformation parameters at multiple scales to manipulate input images within various ranges. CNTNet progressively processes images by stacking multiple non-linear transform layers and convolutional layers while integrating residual connections to capture and leverage subtle image features. The final output is generated through convolutional layers to obtain enhanced images. Experimental results of CNTNet demonstrate that, while maintaining a comparable level of image quality evaluation metrics to mainstream models, it significantly reduces the parameter count to only 2K.

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来源期刊
Electronics Letters
Electronics Letters 工程技术-工程:电子与电气
CiteScore
2.70
自引率
0.00%
发文量
268
审稿时长
3.6 months
期刊介绍: Electronics Letters is an internationally renowned peer-reviewed rapid-communication journal that publishes short original research papers every two weeks. Its broad and interdisciplinary scope covers the latest developments in all electronic engineering related fields including communication, biomedical, optical and device technologies. Electronics Letters also provides further insight into some of the latest developments through special features and interviews. Scope As a journal at the forefront of its field, Electronics Letters publishes papers covering all themes of electronic and electrical engineering. The major themes of the journal are listed below. Antennas and Propagation Biomedical and Bioinspired Technologies, Signal Processing and Applications Control Engineering Electromagnetism: Theory, Materials and Devices Electronic Circuits and Systems Image, Video and Vision Processing and Applications Information, Computing and Communications Instrumentation and Measurement Microwave Technology Optical Communications Photonics and Opto-Electronics Power Electronics, Energy and Sustainability Radar, Sonar and Navigation Semiconductor Technology Signal Processing MIMO
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