17,217 research outputs found
Contextual Influences on Saliency
This article describes a model for including scene/context priors in attention guidance. In the proposed scheme, visual context information can be available early in the visual processing chain, in order to modulate the saliency of image regions and to provide an efficient short cut for object detection and recognition. The scene is represented by means of a low-dimensional global description obtained from low-level features. The global scene features are then used to predict the probability of presence of the target object in the scene, and its location and scale, before exploring the image. Scene information can then be used to modulate the saliency of image regions early during the visual processing in order to provide an efficient short cut for object detection and recognition
VIP: Finding Important People in Images
People preserve memories of events such as birthdays, weddings, or vacations
by capturing photos, often depicting groups of people. Invariably, some
individuals in the image are more important than others given the context of
the event. This paper analyzes the concept of the importance of individuals in
group photographs. We address two specific questions -- Given an image, who are
the most important individuals in it? Given multiple images of a person, which
image depicts the person in the most important role? We introduce a measure of
importance of people in images and investigate the correlation between
importance and visual saliency. We find that not only can we automatically
predict the importance of people from purely visual cues, incorporating this
predicted importance results in significant improvement in applications such as
im2text (generating sentences that describe images of groups of people)
- …