Image dehazing using autoencoder convolutional neural network

被引:0
作者
Richa Singh
Ashwani Kumar Dubey
Rajiv Kapoor
机构
[1] Amity University Uttar Pradesh,Amity Institute of Information Technology
[2] Amity University Uttar Pradesh,Department of Electronics and Communication Engineering, Amity School of Engineering and Technology
[3] Delhi Technological University,Department of Electronics & Communication Engineering
来源
International Journal of System Assurance Engineering and Management | 2022年 / 13卷
关键词
Convolutional neural network; Neural network; Deep neural network; Rectified linear unit; Autoencoder;
D O I
暂无
中图分类号
学科分类号
摘要
In hazy weather, the image in the scene suffers from noise which makes them less visible and to detect an object in hazy weather becomes a challenging task in computer vision. To have noise free image, many researchers have devised denoising techniques for enhancing visibility of images. Denoising is to remove the random variation from images and preserve the image features. As hazy images cause lots of visibility issues, this paper proposes removing haze and enhancing visibility of bad weather images with improved efficacy using an unsupervised neural network autoencoder that compress the data using machine learning and learns through Convolutional Neural Network (CNN). It has been observed that to have increased accuracy, the image classification and analysis is most effective using CNN. An end-to-end decoder training model is used to achieve the quality images. Further, various optimizers are compared to have better accuracy. The quality of images identified by estimation of performance such as RMSE and PSNR values are evaluated over single image and images from existing datasets and our own dataset. In the proposed method, RMSE value comes out to be 0.0373 for image from BSD500 dataset for specific image compared with other state of art approaches. The proposed model is intended in addition to other active, or progressive methods and the suggested method exceeds. The performance quality of images is explored applying measurable metrics. The images are taken from the datasets O-Haze, I-Haze, BSDS500, RESIDE, FRIDA and some from google.
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页码:3002 / 3016
页数:14
相关论文
共 102 条
[1]  
Ancuti CO(2013)single image dehazing by multi-scale fusion IEEE Transact Image Process 22 3271-3282
[2]  
Ancuti C(2017)Vision enhancement through single image fog removal Inter J Eng Sci Technol 20 1075-1083
[3]  
Anwar MJ(2016)A Survey on haze removal using image visibility restoration technique Inter J Comput Sci Mobile Comput 5 96-101
[4]  
Khosla A(2016)Non-local image dehazing IEEE Conf on Comput Vision Pattern Recognition (CVPR) 2016 1674-1682
[5]  
Badhe MV(2016)DehazeNet: an end-to-end system for single image haze removal IEEE Transact Image Process 25 5187-5198
[6]  
Prabhakar LR(2017)Two-layer gaussian process regression with example selection for image dehazing IEEE Transact Circuits Systems Video Technol 27 2505-2517
[7]  
Berman D(2021)Method for Quickly Identifying Mine Water Inrush Using Convolutional Neural Network in Coal Mine Safety Mining Wireless Personal Communications 27 1-9
[8]  
Treibitz T(2008)Single image dehazing ACM Transactions on Graph 34 1-14
[9]  
Avidan S(2014)Dehazing using color-lines ACM Trans Graph. 33 2341-2353
[10]  
Cai B(2021)Sentiment analysis on twitter data by using convolutional neural network (cnn) and long short-term memory (lstm) Wireless Personal Communicat 128 70-77