Abstract
The advancement of digital photography and the popularity of photo sharing social media such as Instagram and Facebook have undoubtedly stimulated growing interest in aesthetics quality improvement. One aspect of photography that contributes to high quality photos is image composition; the spatial arrangement of photo subjects in the image frame. Professional photographers often apply a wealth of photographic composition rules, e.g., rule of thirds, visual balance and simplicity to capture compelling photos. In the recent years, aesthetics-driven recomposition that attempts to computationally modify the composition of an image to mimic a professional photo has started to receive considerable research interest. Researchers have proposed numerous recomposition techniques that utilize a single or a combination of multiple image operators, i.e., cropping, warping and patch rearrangement operators, to modify the composition of an image. In this paper, we present a survey on the state-of-the-arts aesthetic-driven image recomposition. We define the image recomposition problem, outline its objectives, and provide a comprehensive review of the existing image recompositoin techniques, together with a detailed analysis of the effectiveness of each technique in achieving the recomposition objectives. This survey is intended as a good reference for researchers interested in image recomposition.
























Similar content being viewed by others
Notes
RT = Rule of thirds, DD = Diagonal Dominance, VB = Visual Balance, SD = Subject Dominance, RS = Region Size
References
Avidan S, Shamir A (2007) Seam carving for content-aware image resizing. ACM Trans Graph (ToG) 26(3):1–10
Barnes C, Shechtman E, Finkelstein A, Goldman D (2009) Patchmatch: a randomized correspondence algorithm for structural image editing. ACM Trans Graph (ToG) 28(3):24:1–24:11
Bhattacharya S, Sukthankar R, Shah M (2011) A holistic approach to aesthetic enhancement of photographs. ACM Trans Multimed Comput Commun Appl (TOMM) 7(1):1–21
Chang HT, Pan PC, Wang YCF, Chen MS (2015) R2p: recomposition and retargeting of photographic images. In: ACM international conference on multimedia. ACM, pp 927–930
Chang HT, Wang YCF, Chen MS (2014) Transfer in photography composition. In: ACM international conference on multimedia. ACM, pp 957–960
Cho TS, Avidan S, Freeman WT (2010) The patch transform. IEEE Trans Pattern Anal Mach Intell (TPAMI) 32(8):1489–1501
Cho TS, Butman M, Avidan S, Freeman WT (2008) The patch transform and its applications to image editing. In: IEEE conference on computer vision and pattern recognition (CVPR). IEEE, pp 1–8
Cour T, Srinivasan P, Shi J (2007) Balanced graph matching. Adv Neural Inf Proces Syst 19:1–313
Criminisi A, Pérez P, Toyama K (2004) Region filling and object removal by exemplar-based image inpainting. IEEE Trans Image Process 13(9):1200–1212
Datta R, Joshi D, Li J, Wang JZ (2006) Studying aesthetics in photographic images using a computational approach. In: European conference on computer vision (ECCV). Springer, pp 288–301
Fang C, Lin Z, M?ech R, Shen X (2014) Automatic image cropping using visual composition, boundary simplicity and content preservation models. In: ACM international conference on multimedia. ACM, pp 1105–1108
Goferman S, Zelnik-Manor L, Tal A (2012) Context-aware saliency detection. IEEE Trans Pattern Anal Mach Intell (TPAMI) 34(10):1915–1926
Greco L, Cascia ML (2013) Saliency based aesthetic cut of digital images. In: International conference on image analysis and processing, pp 151–160
Guo Y, Liu M, Gu T, Wang W (2012) Improving photo composition elegantly: considering image similarity during composition optimization. In: Computer graphics forum, vol 31. Wiley Online Library, pp 2193–2202
Hsu CC, Lin CW, Fang Y, Lin W (2014) Objective quality assessment for image retargeting based on perceptual geometric distortion and information loss. IEEE J Sel Top Sign Proces 8(3):377–389
Islam MB, Lai-Kuan W, Chee-Onn W, Low LK (2015) Stereoscopic image warping for enhancing composition aesthetics. In: Asian conference on pattern recognition (ACPR)
Jin Y, Wu Q, Liu L (2012) Aesthetic photo composition by optimal crop-and-warp. Comput Graph 36(8):955–965
Ke Y, Tang X, Jing F (2006) The design of high-level features for photo quality assessment. In: IEEE international conference on computer vision and pattern recognition (CVPR). IEEE, pp 419–426
Li K, Yan B, Li J, Majumder A (2015) Seam carving based aesthetics enhancement for photos. Signal Process Image Commun 39:509–516
Liu L, Chen R, Wolf L, Cohen-Or D (2010) Optimizing photo composition. Comput Graphics Forum 29(2):469–478
Liu L, Jin Y, We Q (2010) Realtime aesthetic image retargeting. In: International conference on computational aesthetics in graphics, visualization and imaging, pp 1–8
Lu X, Lin Z, Jin H, Yang J, Wang JZ (2014) Rapid: rating pictorial aesthetics using deep learning. In: ACM international conference on multimedia. ACM, pp 457–466
Lu X, Lin Z, Shen X, Mech R, Wang JZ (2015) Deep multi-patch aggregation network for image style, aesthetics, and quality estimation. In: IEEE International conference on computer vision (ICCV), pp 990–998
Luo Y, Tang X (2008) Photo and video quality evaluation: Focusing on the subject. In: European conference on computer vision (ECCV). Springer, pp 386–399
Marchesotti L, Perronnin F, Larlus D, Csurka G (2011) Assessing the aesthetic quality of photographs using generic image descriptors. In: IEEE international conference on computer vision (ICCV). IEEE, pp 1784–1791
Murray N, Marchesotti L, Perronnin F (2012) Ava: a large-scale database for aesthetic visual analysis. In: IEEE conference on computer vision and pattern recognition (CVPR). IEEE, pp 2408–2415
Park J, Lee JY, Tai YW, Kweon IS (2012) Modeling photo composition and its application to photo re-arrangement. In: IEEE international conference on image processing (ICIP). IEEE, pp 2741–2744
Pritch Y, Kav-Venaki E, Peleg S (2009) Shift-map image editing. In: IEEE international conference on computer vision (ICCV). IEEE, pp 151–158
Qi S, Ho J (2012) Shift-map based stereo image retargeting with disparity adjustment. In: Asian conference on computer vision (ACCV). Springer, pp 457–469
Rother C, Kolmogorov V, Blake A (2004) Grabcut: interactive foreground extraction using iterated graph cuts. ACM Trans Graph (ToG) 23(3):309–314
Samii A, Měch R, Lin Z (2015) Data-driven automatic cropping using semantic composition search. In: Computer graphics forum, vol 34, pp 141–151
Santella A, Agrawala M, DeCarlo D, Salesin D, Cohen M (2006) Gaze-based interaction for semi-automatic photo cropping. In: ACM conference on human factors in computing systems. ACM, pp 771–780
Stentiford F (2007) Attention based auto image cropping. In: Workshop on computational attention and applications (ICVS), vol 1. Citeseer
Suh B, Ling H, Bederson BB, Jacobs DW (2003) Automatic thumbnail cropping and its effectiveness. In: ACM symposium on user interface software and technology. ACM, pp 95–104
Tian X, Dong Z, Yang K, Mei T (2015) Query-dependent aesthetic model with deep learning for photo quality assessment. IEEE Trans Multimedia (TMM) 17 (11):2035–2048
Wolf L, Guttmann M, Cohen-Or D (2007) Non-homogeneous content-driven video-retargeting. In: IEEE international conference on computer vision (ICCV). IEEE, pp 1–6
Wong LK, Low KL (2009) Saliency-enhanced image aesthetics class prediction. In: IEEE international conference on image processing (ICIP). IEEE, pp 997–1000
Wong LK, Low KL (2012) Enhancing visual dominance by semantics-preserving image recomposition. In: ACM international conference on multimedia. ACM, pp 845–848
Wong LK, Low KL (2012) Tearable image warping for extreme image retargeting. In: Computer graphics international (CGI), pp 1–8
Yan J, Lin S, Kang SB, Tang X (2013) Learning the change for automatic image cropping. In: IEEE conference on computer vision and pattern recognition (CVPR), pp 971–978
Yan T, He S, Lau RW, Xu Y (2013) Consistent stereo image editing. In: ACM international conference on multimedia. ACM, pp 677–680
Zhang FL, Wang M, Hu SM (2013) Aesthetic image enhancement by dependence-aware object recomposition. IEEE Trans Multimedia (TMM) 15 (7):1480–1490
Zhang M, Zhang L, Sun Y, Feng L, Ma W (2005) Auto cropping for digital photographs. In: IEEE international conference on multimedia and expo (ICME). IEEE, pp 4–7
Acknowledgments
The authors would like to thank all anonymous photographers who shared their photos in Flickr (license free). This work is supported by the Fundamental Research Grant Scheme (FRGS), Grant No. EP20130326018 and Multimedia University (MMU) Internal Grant, No IP20131108001.
Author information
Authors and Affiliations
Corresponding authors
Rights and permissions
About this article
Cite this article
Islam, M.B., Lai-Kuan, W. & Chee-Onn, W. A survey of aesthetics-driven image recomposition. Multimed Tools Appl 76, 9517–9542 (2017). https://doi.org/10.1007/s11042-016-3561-5
Received:
Revised:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s11042-016-3561-5