Jigsaw puzzle task implementation under simulated prosthetic vision

To research the relationships among the completion time, the original image complexity, gender difference, image resolution and recognizing the image or not, the jigsaw puzzle tasks were planed and tested in simulated prosthetic vision. The original images were divided into three difficulty levels, then came to the conclusion by using the program interface to do the behavior experiment. As a result, the completion time was significantly affected when the image complexity, gender and image resolution changed and subject could recognize the image.

[1]  I. Mario,et al.  Image complexity measure: a human criterion free approach , 2005, NAFIPS 2005 - 2005 Annual Meeting of the North American Fuzzy Information Processing Society.

[2]  W. H. Dobelle Artificial vision for the blind by connecting a television camera to the visual cortex. , 2000, ASAIO journal.

[3]  Richard Alan Peters,et al.  Image Complexity Metrics for Automatic Target Recognizers , 1990 .

[4]  Anthony J. Maeder,et al.  Region-of-interest processing for electronic visual prostheses , 2008, J. Electronic Imaging.

[5]  Gislin Dagnelie,et al.  Visual perception in a blind subject with a chronic microelectronic retinal prosthesis , 2003, Vision Research.

[6]  Gislin Dagnelie,et al.  Paragraph text reading using a pixelized prosthetic vision simulator: parameter dependence and task learning in free-viewing conditions. , 2006, Investigative ophthalmology & visual science.

[7]  D. J. Warren,et al.  A neural interface for a cortical vision prosthesis , 1999, Vision Research.

[8]  S. Kelly,et al.  Perceptual efficacy of electrical stimulation of human retina with a microelectrode array during short-term surgical trials. , 2003, Investigative ophthalmology & visual science.

[9]  Gao Zhen-yu Research on Image Complexity Description Methods , 2010 .

[10]  Tetsuya Yagi,et al.  Temporal properties of retinal ganglion cell responses to local transretinal current stimuli in the frog retina , 2005, Vision Research.

[11]  Gislin Dagnelie,et al.  Facial recognition using simulated prosthetic pixelized vision. , 2003, Investigative ophthalmology & visual science.

[12]  Vito Di Gesù,et al.  On the Evaluation of Images Complexity: A Fuzzy Approach , 2005, WILF.