Introduction - If you have any usage issues, please Google them yourself
A novel Boolean Map based Saliency (BMS) model is
proposed. An image is characterized by a set of binary
images, which are generated by randomly thresholding the
image’s color channels. Based on a Gestalt principle of
figure-ground segregation, BMS computes saliency maps
by analyzing the topological structure of Boolean maps.
BMS is simple to implement and efficient to run. Despite
its simplicity, BMS consistently achieves state-of-the-art
performance compared with ten leading methods on five eye
tracking datasets. Furthermore, BMS is also shown to be
advantageous in salient object detection.