Week 10 Presentation Wesna LaLanne - REU Student Mahdi M. Kalayeh - Mentor.

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Presentation transcript:

Week 10 Presentation Wesna LaLanne - REU Student Mahdi M. Kalayeh - Mentor

Progress Made ●Read “Evaluating Color Descriptors for Object and Scene Recognition”, by Koen E. A. van de Sande from the University of Amsterdam. ●Tested his software to get the color descriptors in our dataset.

Color Moment Invariants

Hue Histogram

RGB Histogram

Transformed Color Histogram

SIFT

Popularity Score We computed popularity score of all our images

Popularity Score We computed popularity score of all our images Low Mid High

Project objectives 1.Capturing the visual trends of Selfie images 2.How to take the best Selfie 3.What filters to pick

Plans for Next Week Finishing Dataset Annotation Training models using deep learning features Mining the effect of our attributes in popularity of image Studying the effect of applying Instagram filters on Selfies