AGD-Net: Attention-Guided Dense Inception U-Net for Single-Image Dehazing

IF 4.3 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Amit Chougule, Agneya Bhardwaj, Vinay Chamola, Pratik Narang
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引用次数: 0

Abstract

Image hazing poses a significant challenge in various computer vision applications, degrading the visual quality and reducing the perceptual clarity of captured scenes. The proposed AGD-Net utilizes a U-Net style architecture with an Attention-Guided Dense Inception encoder-decoder framework. Unlike existing methods that heavily rely on synthetic datasets which are based on CARLA simulation, our model is trained and evaluated exclusively on realistic data, enabling its effectiveness and reliability in practical scenarios. The key innovation of AGD-Net lies in its attention-guided mechanism, which empowers the network to focus on crucial information within hazy images and effectively suppress artifacts during the dehazing process. The dense inception modules further advance the representation capabilities of the model, facilitating the extraction of intricate features from the input images. To assess the performance of AGD-Net, a detailed experimental analysis is conducted on four benchmark haze datasets. The results show that AGD-Net significantly outperforms the state-of-the-art methods in terms of PSNR and SSIM. Moreover, a visual comparison of the dehazing results further validates the superior performance gains achieved by AGD-Net over other methods. By leveraging realistic data exclusively, AGD-Net overcomes the limitations associated with synthetic datasets which are based on CARLA simulation, ensuring its adaptability and effectiveness in real-world circumstances. The proposed AGD-Net offers a robust and reliable solution for single-image dehazing, presenting a significant advancement over existing methods.

Abstract Image

AGD-Net:用于单张图像去毛刺的注意力引导高密度截取 U 网
图像模糊是各种计算机视觉应用中的一个重大挑战,它会降低视觉质量,降低捕捉场景的感知清晰度。所提出的 AGD-Net 采用了 U-Net 风格的架构和注意力引导密集阈值编码器-解码器框架。与严重依赖基于 CARLA 仿真的合成数据集的现有方法不同,我们的模型完全基于真实数据进行训练和评估,因此在实际应用场景中非常有效和可靠。AGD-Net 的关键创新点在于其注意力引导机制,该机制使网络在去雾化过程中能够聚焦于模糊图像中的关键信息,并有效抑制伪影。密集截取模块进一步提高了模型的表示能力,有助于从输入图像中提取复杂的特征。为了评估 AGD-Net 的性能,我们在四个基准雾霾数据集上进行了详细的实验分析。结果表明,AGD-Net 在 PSNR 和 SSIM 方面明显优于最先进的方法。此外,通过对除霾结果进行可视化比较,进一步验证了 AGD-Net 相对于其他方法所取得的卓越性能。通过完全利用现实数据,AGD-Net 克服了基于 CARLA 模拟的合成数据集的局限性,确保了其在现实环境中的适应性和有效性。所提出的 AGD-Net 为单图像去毛刺提供了一种稳健可靠的解决方案,与现有方法相比取得了显著进步。
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来源期刊
Cognitive Computation
Cognitive Computation COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-NEUROSCIENCES
CiteScore
9.30
自引率
3.70%
发文量
116
审稿时长
>12 weeks
期刊介绍: Cognitive Computation is an international, peer-reviewed, interdisciplinary journal that publishes cutting-edge articles describing original basic and applied work involving biologically-inspired computational accounts of all aspects of natural and artificial cognitive systems. It provides a new platform for the dissemination of research, current practices and future trends in the emerging discipline of cognitive computation that bridges the gap between life sciences, social sciences, engineering, physical and mathematical sciences, and humanities.
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