论文标题

通过多视图学习选择系列照片学习

Series Photo Selection via Multi-view Graph Learning

论文作者

Huang, Jin, Zhang, Lu, Gong, Yongshun, Zhang, Jian, Nie, Xiushan, Yin, Yilong

论文摘要

串联照片选择(SPS)是图像美学质量评估的重要分支,它的重点是从一系列几乎相同的照片中找到最佳的图像。尽管已经观察到了一个巨大的进步,但大多数现有的SPS方法仅集中于从原始图像中提取特征,而忽略了多种视图,例如,饱和度,颜色直方图和图像景点的深度,可以成功地反映出微妙的美观变化,这将是有益的。考虑到多视图,我们利用图神经网络来构建多视图功能之间的关系。此外,多种视图与自适应体重自我发项模块一起汇总,以验证每种观点的重要性。最后,提出了一个暹罗网络,以从一系列几乎相同的照片中选择最佳的网络。实验结果表明,与竞争方法相比,我们的模型达到了最高的成功率。

Series photo selection (SPS) is an important branch of the image aesthetics quality assessment, which focuses on finding the best one from a series of nearly identical photos. While a great progress has been observed, most of the existing SPS approaches concentrate solely on extracting features from the original image, neglecting that multiple views, e.g, saturation level, color histogram and depth of field of the image, will be of benefit to successfully reflecting the subtle aesthetic changes. Taken multi-view into consideration, we leverage a graph neural network to construct the relationships between multi-view features. Besides, multiple views are aggregated with an adaptive-weight self-attention module to verify the significance of each view. Finally, a siamese network is proposed to select the best one from a series of nearly identical photos. Experimental results demonstrate that our model accomplish the highest success rates compared with competitive methods.

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