Run Your Images Through MIT's LaMem to See How Memorable They Are

The Massachusetts Institute of Technology's Computer Science and Artificial Intelligence Laboratory has devloped an algorithm that is designed to determine just how memorable an image is.

From the LaMem website

Progress in estimating visual memorability has been limited by the small scale and lack of variety of benchmark data. Here, we introduce a novel experimental procedure to objectively measure human memory, allowing us to build LaMem, the largest annotated image memorability dataset to date (containing 60,000 images from diverse sources). Using Convolutional Neural Networks (CNNs), we show that fine-tuned deep features outperform all other features by a large margin, reaching a rank correlation of 0.64, near human consistency (0.68). Analysis of the responses of the high-level CNN layers shows which objects and regions are positively, and negatively, correlated with memorability, allowing us to create memorability maps for each image and provide a concrete method to perform image memorability manipulation. This work demonstrates that one can now robustly estimate the memorability of images from many different classes, positioning memorability and deep memorability features as prime candidates to estimate the utility of information for cognitive systems.
Ready to give it a try? Just click here.

Posted: 6/22/2016 10:59:14 AM ET   Posted By: Sean
Posted to: Canon News, Sony News    
Share on Facebook! Share on X! Share on Pinterest! Email this page to a friend!
Send Comments
Terms of Use, Privacy  |  © 2024 Rectangular Media, LLC  |  Bryan CarnathanPowered by Christ!