Efficient single image-based dehazing technique using convolutional neural networks

Harish Babu Gade,Venkata Krishna Odugu, Janardhana Rao B., Satish B., Venkatram N., Revathi K.

Multimedia Tools and Applications(2024)

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摘要
This research proposes a learning-based efficient single-image dehazing method. Dehazing, discriminator, and fine-tuning networks build the end-to-end network model. These three techniques are independently trained on suitable datasets. An end-to-end network architecture improves dehazing. The dehazing network model estimates transmission map, atmospheric light, and parallel convolution layers to analyze the input hazy image. The discrimination network extracted a discriminated dehazing image. Finally, discriminator network model findings are used for fine-tuning. The suggested model is tested using foggy images from various datasets and performance measures including PSNR, SSIM, MSE, and Entropy. The suggested learning-based image dehazing is compared to existing approaches qualitatively and quantitatively. The suggested approach improves PSNR by 34.3
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关键词
CNN,Deep learning networks,Image dehazing,PSNR,Dehazing network and discriminator network
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