Learning the Change for Automatic Image Cropping

Jianzhou Yan, Stephen Lin, S. B. Kang, Xiaoou Tang
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引用次数: 102

Abstract

Image cropping is a common operation used to improve the visual quality of photographs. In this paper, we present an automatic cropping technique that accounts for the two primary considerations of people when they crop: removal of distracting content, and enhancement of overall composition. Our approach utilizes a large training set consisting of photos before and after cropping by expert photographers to learn how to evaluate these two factors in a crop. In contrast to the many methods that exist for general assessment of image quality, ours specifically examines differences between the original and cropped photo in solving for the crop parameters. To this end, several novel image features are proposed to model the changes in image content and composition when a crop is applied. Our experiments demonstrate improvements of our method over recent cropping algorithms on a broad range of images.
学习自动图像裁剪的变化
图像裁剪是一种常用的操作,用于提高照片的视觉质量。在本文中,我们提出了一种自动裁剪技术,该技术考虑了人们在裁剪时的两个主要考虑因素:去除分散注意力的内容,增强整体构图。我们的方法利用由专业摄影师裁剪前后的照片组成的大型训练集来学习如何评估裁剪中的这两个因素。与现有的许多用于图像质量一般评估的方法相比,我们的方法在求解裁剪参数时专门检查原始照片和裁剪照片之间的差异。为此,提出了几个新的图像特征来模拟图像内容和组成的变化,当一个裁剪应用。我们的实验证明了我们的方法在广泛的图像上比最近的裁剪算法有所改进。
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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