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Title: | UW-GAN: single image depth estimation and image enhancement for underwater images |
Authors: | Hambarde, P. Murala, S. Dhall, A. |
Keywords: | Adversarial learning coarse-level depth finelevel depth image enhancement underwater depth estimation |
Issue Date: | 6-Dec-2021 |
Abstract: | Due to the unavailability of large-scale underwater depth image datasets and ill-posed problems, underwater single-image depth prediction is a challenging task. An unambiguous depth prediction for single underwater image is an essential part of applications like underwater robotics, marine engineering, and so on. This article presents an endto-end underwater generative adversarial network (UW-GAN) for depth estimation from an underwater single image. Initially, a coarse-level depth map is estimated using the underwater coarse-level generative network (UWC-Net). Then, a fine-level depth map is computed using the underwater fine-level network (UWF-Net) which takes input as the concatenation of the estimated coarse-level depth map and the input image. The proposed UWF-Net composes of spatial and channel-wise squeeze and excitation block for fine-level depth estimation. Also, we propose a synthetic underwater image generation approach for largescale database. The proposed network is tested on real-world and synthetic underwater datasets for its performance analysis. We also perform a complete evaluation of the proposed UW-GAN on underwater images having different color domination, contrast, and lighting conditions. Presented UW-GAN framework is also investigated for underwater single-image enhancement. Extensive result analysis proves the superiority of proposed UW-GAN over the state-of-the-art (SoTA) hand-crafted, and learning-based approaches for underwater single-image depth estimation (USIDE) and enhancement. |
URI: | http://localhost:8080/xmlui/handle/123456789/3292 |
Appears in Collections: | Year-2021 |
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