Title :
Near-optimal detection of geometric objects by fast multiscale methods
Author :
Arias-Castro, Ery ; Donoho, David L. ; Huo, Xiaoming
Author_Institution :
Dept. of Stat., Stanford Univ., CA, USA
fDate :
7/1/2005 12:00:00 AM
Abstract :
We construct detectors for "geometric" objects in noisy data. Examples include a detector for presence of a line segment of unknown length, position, and orientation in two-dimensional image data with additive white Gaussian noise. We focus on the following two issues. i) The optimal detection threshold-i.e., the signal strength below which no method of detection can be successful for large dataset size n. ii) The optimal computational complexity of a near-optimal detector, i.e., the complexity required to detect signals slightly exceeding the detection threshold. We describe a general approach to such problems which covers several classes of geometrically defined signals; for example, with one-dimensional data, signals having elevated mean on an interval, and, in d-dimensional data, signals with elevated mean on a rectangle, a ball, or an ellipsoid. In all these problems, we show that a naive or straightforward approach leads to detector thresholds and algorithms which are asymptotically far away from optimal. At the same time, a multiscale geometric analysis of these classes of objects allows us to derive asymptotically optimal detection thresholds and fast algorithms for near-optimal detectors.
Keywords :
AWGN; Hough transforms; Radon transforms; image recognition; image segmentation; object detection; Hough transform; Radon transform; additive white Gaussian noise; geometric object detector; image processing; line segment detection; multiscale geometric analysis; two-dimensional image data; Additive white noise; Algorithm design and analysis; Computational complexity; Detectors; Ellipsoids; Image segmentation; Marine vehicles; Object detection; Shape; Signal detection; Beamlets; Hough transform; Radon transform; detecting hot spots; detecting line segments; image processing; maxima of Gaussian processes; multiscale geometric analysis;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2005.850056