Understanding 3D layout of natural scenes
Lead Research Organisation:
University of Southampton
Department Name: Sch of Psychology
Abstract
A key goal of human vision is to build a representation of our surroundings. For example, on entering a
room we recognise familiar objects and perceive their size and location. We are able to understand our
surroundings from a single glance - so called 'rapid scene perception' or 'gist perception'. However, little
is known about the computations that underlie rapid scene perception, or how our perception is
modulated by task demands (e.g. planning a route vs. finding a friend). Previous work suggests that our
visual processing of a natural scene can be influenced by current goals. Here we ask what information
observers use during different depth-focused tasks, such as route planning or estimating distances to
objects in the scene. To investigate how the visual perception of natural scenes unfolds over time, I will
use the Southampton-York Natural Scenes dataset, which allows presenting stereoscopic images of real,
complex scenes and compare the depth perception with real 3D layout of a scene. Eye trackers will be
used to measure where observers fixate when performing different tasks. The proposed research has a
broad range of applications, including computer vision, robotics and the development of autonomous
vehicles - embedding human-like characteristics in machine approaches to 3D reconstruction is likely to
have substantial benefits.
room we recognise familiar objects and perceive their size and location. We are able to understand our
surroundings from a single glance - so called 'rapid scene perception' or 'gist perception'. However, little
is known about the computations that underlie rapid scene perception, or how our perception is
modulated by task demands (e.g. planning a route vs. finding a friend). Previous work suggests that our
visual processing of a natural scene can be influenced by current goals. Here we ask what information
observers use during different depth-focused tasks, such as route planning or estimating distances to
objects in the scene. To investigate how the visual perception of natural scenes unfolds over time, I will
use the Southampton-York Natural Scenes dataset, which allows presenting stereoscopic images of real,
complex scenes and compare the depth perception with real 3D layout of a scene. Eye trackers will be
used to measure where observers fixate when performing different tasks. The proposed research has a
broad range of applications, including computer vision, robotics and the development of autonomous
vehicles - embedding human-like characteristics in machine approaches to 3D reconstruction is likely to
have substantial benefits.
Organisations
People |
ORCID iD |
Wendy Adams (Primary Supervisor) | |
Michaela Trescakova (Student) |
Studentship Projects
Project Reference | Relationship | Related To | Start | End | Student Name |
---|---|---|---|---|---|
ES/P000673/1 | 30/09/2017 | 29/09/2028 | |||
2444108 | Studentship | ES/P000673/1 | 30/09/2020 | 14/08/2024 | Michaela Trescakova |