A Geometry-Sensitive Approach for Photographic Style Classification
Citation:
Ghosal, Koustav; Prasad, Mukta; Smolic, Aljosa, A Geometry-Sensitive Approach for Photographic Style Classification, Irish Machine Vision and Image Processing Conference 2018 (IMVIP), 2018., 2018Abstract:
Photographs are characterized by different compositional attributes like the Rule of Thirds, depth of field,
vanishing-lines etc. The presence or absence of one or more of these attributes contributes to the overall artistic value of an image. In this work, we analyze the ability of deep learning based methods to
learn such photographic style attributes. We observe that although a standard CNN learns the texture and
appearance based features reasonably well, its understanding of global and geometric features is limited
by two factors. First, the data-augmentation strategies (cropping, warping, etc.) distort the composition
of a photograph and affect the performance. Secondly, the CNN features, in principle, are translationinvariant and appearance-dependent. But some geometric properties important for aesthetics, e.g. the Rule
of Thirds (RoT), are position-dependent and appearance-invariant. Therefore, we propose a novel input
representation which is geometry-sensitive, position-cognizant and appearance-invariant. We further introduce a two-column CNN architecture that performs better than the state-of-the-art (SoA) in photographic
style classification. From our results, we observe that the proposed network learns both the geometric and
appearance-based attributes better than the SoA.
Sponsor
Grant Number
Science Foundation Ireland (SFI)
15/RP/2776
Author's Homepage:
http://people.tcd.ie/smolicaDescription:
PUBLISHED
Author: Smolic, Aljosa
Sponsor:
Science Foundation Ireland (SFI)Other Titles:
Irish Machine Vision and Image Processing Conference 2018 (IMVIP), 2018.Type of material:
Conference PaperCollections
Availability:
Full text availableSubject (TCD):
Creative Technologies , Multimedia & CreativityDOI:
https://doi.org/10.25546/90363Metadata
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