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Ian Reid

Researcher at University of Adelaide

Publications -  474
Citations -  47964

Ian Reid is an academic researcher from University of Adelaide. The author has contributed to research in topics: Deep learning & Segmentation. The author has an hindex of 88, co-authored 469 publications receiving 37035 citations. Previous affiliations of Ian Reid include Brunel University London & Queensland University of Technology.

Papers
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Proceedings ArticleDOI

Single view metrology

TL;DR: An algebraic representation is developed which unifies the three types of measurement and, amongst other advantages, permits a first order error propagation analysis to be performed, associating an uncertainty with each measurement.
Proceedings ArticleDOI

Metric calibration of a stereo rig

TL;DR: In this article, a method to determine affine and metric calibration for a stereo rig with fixed parameters is described. But this method does not involve the use of calibration objects or special motions, but simply a single general motion of the rig with a fixed parameters (i.e. camera parameters and relative orientation of the camera pair).
Posted Content

Tracking the Trackers: An Analysis of the State of the Art in Multiple Object Tracking

TL;DR: The current trends and weaknesses of multiple people tracking methods are shown, and pointers of what researchers should be focusing on to push the field forward are provided.
Proceedings ArticleDOI

Parallel Attention: A Unified Framework for Visual Object Discovery Through Dialogs and Queries

TL;DR: The authors proposed a ParalleL AttentioN (PLAN) network to discover the object in an image that is being referred to in variable length natural expression descriptions, from short phrases query to long multi-round dialogs.
Proceedings ArticleDOI

PWP3D: Real-time Segmentation and Tracking of 3D Objects.

TL;DR: A probabilistic framework for simultaneous 2D segmentation and 2D– 3D pose tracking, using a known 3D model of the segmented object, using posterior membership probabilities for foreground and background pixels, rather than pixel likelihoods.