Perceptual tasks such as edge detection, image segmentation, lightness computation and estimation of three-dimensional structure are considered to be low-level or mid-level vision problems and are traditionally approached in a bottom–up, generic and hard-wired way. An alternative to this would be to take a top–down, object-class-specific and example-based approach. In this paper, we present a simple computational model implementing the latter approach. The results generated by our model when tested on edge-detection and view-prediction tasks for three-dimensional objects are consistent with human perceptual expectations. The model's performance is highly tolerant to the problems of sensor noise and incomplete input image information. Result...
Pixel-level prediction enables visual understanding at finer granularity, such as segmenting all the...
Recently, there has been a trend towards developing low level vision models based on an analysis of ...
Because of the difficulty of obtaining ground truth for real images, the traditional technique for c...
Perceptual tasks such as edge detection, image segmentation, lightness computation and estimation of...
AbstractPerceptual tasks such as edge detection, image segmentation, lightness computation and estim...
Psychophysical findings accumulated over the past several decades indicate that perceptual tasks suc...
Psychophysical ndings accumulated over the past several decades indicate that perceptual tasks such ...
We present an approach to solving computer vision problems in which the goal is to produce a high-di...
Humans learn robust and efficient strategies for visual tasks through interaction with their environ...
i-.; 1 This research project aims to use machine learning techniques to improve the performance of t...
Distinguishing edges caused by a change in depth from other types of edges is an important problem i...
Influential models of edge detection have generally supposed that an edge is detected at peaks in th...
Edge detection is important both for its practical applications to computer vision as well as its re...
Computational or information-processing theories of vision describe object recognition in terms of a...
In classical models of object recognition, first, basic features (e.g., edges and lines) are analyze...
Pixel-level prediction enables visual understanding at finer granularity, such as segmenting all the...
Recently, there has been a trend towards developing low level vision models based on an analysis of ...
Because of the difficulty of obtaining ground truth for real images, the traditional technique for c...
Perceptual tasks such as edge detection, image segmentation, lightness computation and estimation of...
AbstractPerceptual tasks such as edge detection, image segmentation, lightness computation and estim...
Psychophysical findings accumulated over the past several decades indicate that perceptual tasks suc...
Psychophysical ndings accumulated over the past several decades indicate that perceptual tasks such ...
We present an approach to solving computer vision problems in which the goal is to produce a high-di...
Humans learn robust and efficient strategies for visual tasks through interaction with their environ...
i-.; 1 This research project aims to use machine learning techniques to improve the performance of t...
Distinguishing edges caused by a change in depth from other types of edges is an important problem i...
Influential models of edge detection have generally supposed that an edge is detected at peaks in th...
Edge detection is important both for its practical applications to computer vision as well as its re...
Computational or information-processing theories of vision describe object recognition in terms of a...
In classical models of object recognition, first, basic features (e.g., edges and lines) are analyze...
Pixel-level prediction enables visual understanding at finer granularity, such as segmenting all the...
Recently, there has been a trend towards developing low level vision models based on an analysis of ...
Because of the difficulty of obtaining ground truth for real images, the traditional technique for c...