Recovering depth from still images for underwater dehazing using deep learning

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Abstract

Estimating depth from a single image is a challenging problem, but it is also interesting due to the large amount of applications, such as underwater image dehazing. In this paper, a new perspective is provided; by taking advantage of the underwater haze that may provide a strong cue to the depth of the scene, a neural network can be used to estimate it. Using this approach the depthmap can be used in a dehazing method to enhance the image and recover original colors, offering a better input to image recognition algorithms and, thus, improving the robot performance during vision-based tasks such as object detection and characterization of the seafloor. Experiments are conducted on different datasets that cover a wide variety of textures and conditions, while using a dense stereo depthmap as ground truth for training, validation and testing. The results show that the neural network outperforms other alternatives, such as the dark channel prior methods and it is able to accurately estimate depth from a single image after a training stage with depth information.

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APA

Pérez, J., Bryson, M., Williams, S. B., & Sanz, P. J. (2020). Recovering depth from still images for underwater dehazing using deep learning. Sensors (Switzerland), 20(16), 1–16. https://doi.org/10.3390/s20164580

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