papers AI Learner
The Github is limit! Click to go to the new site.

Deep Learning from Shallow Dives: Sonar Image Generation and Training for Underwater Object Detection

2018-10-18
Sejin Lee, Byungjae Park, Ayoung Kim

Abstract

Among underwater perceptual sensors, imaging sonar has been highlighted for its perceptual robustness underwater. The major challenge of imaging sonar, however, arises from the difficulty in defining visual features despite limited resolution and high noise levels. Recent developments in deep learning provide a powerful solution for computer-vision researches using optical images. Unfortunately, deep learning-based approaches are not well established for imaging sonars, mainly due to the scant data in the training phase. Unlike the abundant publically available terrestrial images, obtaining underwater images is often costly, and securing enough underwater images for training is not straightforward. To tackle this issue, this paper presents a solution to this field’s lack of data by introducing a novel end-to-end image-synthesizing method in the training image preparation phase. The proposed method present image synthesizing scheme to the images captured by an underwater simulator. Our synthetic images are based on the sonar imaging models and noisy characteristics to represent the real data obtained from the sea. We validate the proposed scheme by training using a simulator and by testing the simulated images with real underwater sonar images obtained from a water tank and the sea.

Abstract (translated by Google)
URL

https://arxiv.org/abs/1810.07990

PDF

https://arxiv.org/pdf/1810.07990


Similar Posts

Comments