My camera can see through fences: A deep learning approach for image de-fencing

Sankaraganesh Jonna, K. K. Nakka, R. R. Sahay
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引用次数: 18

Abstract

In recent times, the availability of inexpensive image capturing devices such as smartphones/tablets has led to an exponential increase in the number of images/videos captured. However, sometimes the amateur photographer is hindered by fences in the scene which have to be removed after the image has been captured. Conventional approaches to image de-fencing suffer from inaccurate and non-robust fence detection apart from being limited to processing images of only static occluded scenes. In this paper, we propose a semi-automated de-fencing algorithm using a video of the dynamic scene. We use convolutional neural networks for detecting fence pixels. We provide qualitative as well as quantitative comparison results with existing lattice detection algorithms on the existing PSU NRT data set [1] and a proposed challenging fenced image dataset. The inverse problem offence removal is solved using split Bregman technique assuming total variation of the de-fenced image as the regularization constraint.
我的相机可以看穿栅栏:一种用于图像反栅栏的深度学习方法
最近,廉价的图像捕捉设备(如智能手机/平板电脑)的可用性导致捕获的图像/视频数量呈指数级增长。然而,有时业余摄影师会被场景中的栅栏所阻碍,这些栅栏必须在捕获图像后被移除。传统的图像去栅栏方法除了仅限于处理静态遮挡场景的图像外,还存在不准确和不鲁棒的栅栏检测问题。在本文中,我们提出了一种基于动态场景视频的半自动化防御算法。我们使用卷积神经网络来检测栅栏像素。我们在现有的PSU NRT数据集[1]和提出的具有挑战性的围栏图像数据集上提供了与现有晶格检测算法的定性和定量比较结果。以被防御图像的总变分作为正则化约束,采用分裂Bregman技术解决反问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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