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Photo Filter Recommendation by Category-Aware Aesthetic Learning

机译:类别意识审美学习推荐的照片滤镜

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摘要

Nowadays, social media has become a popular platform for the public to share photos. To make photos more visually appealing, users usually apply filters on their photos without domain knowledge. However, due to the growing number of filter types, it becomes a major issue for users to choose the best filter type. For this purpose, filter recommendation for photo aesthetics takes an important role in image quality ranking problems. In these years, several works have declared that convolutional neural networks (CNNs) outperform traditional methods in image aesthetic categorization, which classifies images into high or low quality. Most of them do not consider the effect on filtered images; hence, we propose a novel image aesthetic learning for filter recommendation. Instead of binarizing image quality, we adjust the state-of-the-art CNN architectures and design a pairwise loss function to learn the embedded aesthetic responses in hidden layers for filtered images. Based on our pilot study, we observe image categories (e.g., portrait, landscape, food) will affect user preference on filter selection. We further integrate category classification into our proposed aesthetic-oriented models. To the best of our knowledge, there is no public dataset for aesthetic judgment with filtered images. We create a new dataset called filter aesthetic comparison dataset (FACD). It is the first dataset containing 28 160 filtered images and 42 240 user preference labels. We conduct experiments on the collected FACD for filter recommendation, and the results show that our proposed category-aware aesthetic learning outperforms aesthetic classification methods (e.g., 12% relative improvement).
机译:如今,社交媒体已成为公众共享照片的流行平台。为了使照片更具视觉吸引力,用户通常在没有域知识的情况下对照片应用滤镜。但是,由于过滤器类型数量的增加,用户选择最佳过滤器类型成为一个主要问题。为此,针对照片美学的滤镜推荐在图像质量排名问题中起着重要作用。近年来,有几篇著作宣称卷积神经网络(CNN)在图像美学分类方面优于传统方法,后者将图像分为高质量或低质量。他们中的大多数人不考虑对过滤图像的影响。因此,我们提出了一种新颖的图像美学学习方法来进行滤镜推荐。我们没有调整图像质量的二值化,而是调整了最新的CNN架构,并设计了成对损失函数,以了解隐藏层中对于滤波图像的嵌入美学响应。根据我们的初步研究,我们观察到图像类别(例如,肖像,风景,食物)会影响用户对滤镜选择的偏好。我们将类别分类进一步整合到我们提出的美学导向模型中。据我们所知,没有公开的数据集可以对经过过滤的图像进行美学判断。我们创建了一个新的数据集,称为过滤器美学比较数据集(FACD)。它是第一个包含28×160个过滤图像和42×240个用户首选项标签的数据集。我们对收集的FACD进行了实验以进行过滤推荐,结果表明,我们提出的类别感知美学学习的效果优于美学分类方法(例如,相对提高了12%)。

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