Adaptive Energy Selection for Content-Aware Image Resizing

Kazuma Sasaki, Yuya Nagahama, Zheng Ze, S. Iizuka, E. Simo-Serra, Yoshihiko Mochizuki, H. Ishikawa
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Abstract

Content-aware image resizing aims to reduce the size of an image without touching important objects and regions. In seam carving, this is done by assessing the importance of each pixel by an energy function and repeatedly removing a string of pixels avoiding pixels with high energy. However, there is no single energy function that is best for all images: the optimal energy function is itself a function of the image. In this paper, we present a method for predicting the quality of the results of resizing an image with different energy functions, so as to select the energy best suited for that particular image. We formulate the selection as a classification problem; i.e., we 'classify' the input into the class of images for which one of the energies works best. The standard approach would be to use a CNN for the classification. However, the existence of a fully connected layer forces us to resize the input to a fixed size, which obliterates useful information, especially lower-level features that more closely relate to the energies used for seam carving. Instead, we extract a feature from internal convolutional layers, which results in a fixed-length vector regardless of the input size, making it amenable to classification with a Support Vector Machine. This formulation of the algorithm selection as a classification problem can be used whenever there are multiple approaches for a specific image processing task. We validate our approach with a user study, where our method outperforms recent seam carving approaches.
自适应能量选择的内容感知图像调整大小
内容感知图像大小调整的目的是在不触及重要对象和区域的情况下减小图像的大小。在接缝雕刻中,这是通过通过能量函数评估每个像素的重要性并反复去除一串像素来完成的,以避免高能量像素。然而,没有一个单一的能量函数对所有图像都是最好的:最优的能量函数本身就是图像的函数。在本文中,我们提出了一种预测不同能量函数的图像大小调整结果质量的方法,从而选择最适合该特定图像的能量。我们将选择表述为一个分类问题;也就是说,我们将输入“分类”到其中一个能量最有效的图像类别中。标准的方法是使用CNN进行分类。然而,完全连接层的存在迫使我们将输入的大小调整为固定的大小,这会抹掉有用的信息,特别是与用于缝雕刻的能量更密切相关的较低级别特征。相反,我们从内部卷积层中提取一个特征,无论输入大小如何,都会得到一个固定长度的向量,使其适合使用支持向量机进行分类。当一个特定的图像处理任务有多种方法时,可以使用这种将算法选择作为分类问题的表述。我们通过用户研究验证了我们的方法,其中我们的方法优于最近的接缝雕刻方法。
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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