Fusion of multichannel local and global structural cues for photo aesthetics evaluation.

IEEE Transactions on Image Processing(2014)

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摘要
Photo aesthetic quality evaluation is a fundamental yet under addressed task in computer vision and image processing fields. Conventional approaches are frustrated by the following two drawbacks. First, both the local and global spatial arrangements of image regions play an important role in photo aesthetics. However, existing rules, e.g., visual balance, heuristically define which spatial distribution among the salient regions of a photo is aesthetically pleasing. Second, it is difficult to adjust visual cues from multiple channels automatically in photo aesthetics assessment. To solve these problems, we propose a new photo aesthetics evaluation framework, focusing on learning the image descriptors that characterize local and global structural aesthetics from multiple visual channels. In particular, to describe the spatial structure of the image local regions, we construct graphlets small-sized connected graphs by connecting spatially adjacent atomic regions. Since spatially adjacent graphlets distribute closely in their feature space, we project them onto a manifold and subsequently propose an embedding algorithm. The embedding algorithm encodes the photo global spatial layout into graphlets. Simultaneously, the importance of graphlets from multiple visual channels are dynamically adjusted. Finally, these post-embedding graphlets are integrated for photo aesthetics evaluation using a probabilistic model. Experimental results show that: 1) the visualized graphlets explicitly capture the aesthetically arranged atomic regions; 2) the proposed approach generalizes and improves four prominent aesthetic rules; and 3) our approach significantly outperforms state-of-the-art algorithms in photo aesthetics prediction.
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关键词
visualized graphlets,image coding,global structural aesthetics,adjacent atomic regions,photo aesthetics prediction,image fusion,embedding algorithm,graphlets small-sized connected graphs,image descriptors,photo global spatial layout encoding,aesthetic evaluation,image processing fields,spatial structure,multi-channel,photo aesthetics evaluation framework,multichannel local cue fusion,computer vision,local spatial arrangement,graph theory,photo aesthetic quality evaluation,structural cues,visual cues,multichannel global structural cue fusion,local structural aesthetics,post-embedding graphlets,global spatial arrangement,visual channels,spatially adjacent graphlets,probability,photo aesthetics assessment,probabilistic model,layout,graphical models,vectors,probabilistic logic,visualization
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