ABSTRACT
We present a crowdsourcing approach to tackle the challenge of collecting hard-to-find data. Our immediate need for the data arises because we are studying edited images in context online, and the way that this use impacts users' perceptions. Study of this topic cannot advance without a large, diverse data set of image/context pairs. The image in the pair should be suspected of having been edited, and the context is the place (e.g., website or social media post) in which it has been used online. Such pairs are hard to find, and could not be collected, due to techno-practical constraints, without the support of crowdsourcing. This paper describes a three-step approach to data set creation involving mining social data, applying image analysis techniques, and, finally, making use of the crowd to complete the necessary information. We close with a discussion of the potential and limitations of the data set collected.
- V. Conotter, D.-T. Dang-Nguyen, G. Boato, M. Menéndez, and M. Larson. Assessing the impact of image manipulation on users' perceptions of deception. In SPIE, HVEI XIX, volume 9014, 2014.Google Scholar
- FourAndSix. Photo tampering throughout history. Online at http://www.fourandsix.com/photo-tampering-history. 2014.Google Scholar
- E. Kee, M. K. Johnson, and H. Farid. Digital image authentication from JPEG headers. IEEE TIFS, 6(3):1066--1075, 2011. Google ScholarDigital Library
- M. Larson et al. Automatic tagging and geotagging in video collections and communities. In ACM ICMR, pages 51:1--51:8, 2011. Google ScholarDigital Library
- M. Larson, M. Melenhorst, M. Menéndez, and P. Xu. Using crowdsourcing to capture complexity in human interpretations of multimedia content. Fusion in Computer Vision, page 229, 2014.Google ScholarCross Ref
- A. Piva. An overview on image forensics. ISRN Signal Processing, 2013:1--22, 2013.Google ScholarCross Ref
Index Terms
- A Crowdsourced Data Set of Edited Images Online
Recommendations
An Enhanced Technique to Clean Data in the Data Warehouse
DESE '11: Proceedings of the 2011 Developments in E-systems EngineeringData quality is a critical factor for the success of data warehousing projects. Improving the quality of data is important in data warehouse, because it is used in the process of decision support, which requires accurate data. There are many errors and ...
Hybrid images
SIGGRAPH '06: ACM SIGGRAPH 2006 PapersWe present hybrid images, a technique that produces static images with two interpretations, which change as a function of viewing distance. Hybrid images are based on the multiscale processing of images by the human visual system and are motivated by ...
Human Perception of Visual Realism for Photo and Computer-Generated Face Images
Computer-generated (CG) face images are common in video games, advertisements, and other media. CG faces vary in their degree of realism, a factor that impacts viewer reactions. Therefore, efficient control of visual realism of face images is important. ...
Comments