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Journal ArticleDOI

Optimal edge-based shape detection

TLDR
An approach to accurately detecting two-dimensional (2-D) shapes by extending the DODE filter along the shape's boundary contour by compute the expected shape of the response and derive some of its statistical properties.
Abstract
We propose an approach to accurately detecting two-dimensional (2-D) shapes. The cross section of the shape boundary is modeled as a step function. We first derive a one-dimensional (1-D) optimal step edge operator, which minimizes both the noise power and the mean squared error between the input and the filter output. This operator is found to be the derivative of the double exponential (DODE) function, originally derived by Ben-Arie and Rao (1994). We define an operator for shape detection by extending the DODE filter along the shape's boundary contour. The responses are accumulated at the centroid of the operator to estimate the likelihood of the presence of the given shape. This method of detecting a shape is in fact a natural extension of the task of edge detection at the pixel level to the problem of global contour detection. This simple filtering scheme also provides a tool for a systematic analysis of edge-based shape detection. We investigate how the error is propagated by the shape geometry. We have found that, under general assumptions, the operator is locally linear at the peak of the response. We compute the expected shape of the response and derive some of its statistical properties. This enables us to predict both its localization and detection performance and adjust its parameters according to imaging conditions and given performance specifications. Applications to the problem of vehicle detection in aerial images, human facial feature detection, and contour tracking in video are presented.

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Citations
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Journal ArticleDOI

Face Detection

TL;DR: A comprehensive and critical survey of face detection algorithms, ranging from simple edge-based algorithms to composite high-level approaches utilizing advanced pattern recognition methods, is presented.
Proceedings ArticleDOI

Modeling Age Progression in Young Faces

TL;DR: The proposed craniofacial growth model can be used to predict one’s appearance across years and to perform face recognition across age progression and is demonstrated on a database of age separated face images of individuals under 18 years of age.
Journal ArticleDOI

Vehicle Detection Using Partial Least Squares

TL;DR: A vehicle detector that improves upon previous approaches by incorporating a very large and rich set of image descriptors and a powerful feature selection analysis is employed to improve the performance while vastly reducing the number of features that must be calculated.
Journal ArticleDOI

Using Deep Learning to Detect Defects in Manufacturing: A Comprehensive Survey and Current Challenges.

TL;DR: In this paper, a survey of state-of-the-art deep learning methods for defect detection is presented, focusing on three aspects, namely method and experimental results, and the core ideas and codes of studies related to high precision, high positioning, rapid detection, small object, complex background, occluded object detection and object association.
Journal ArticleDOI

Features versus Context: An Approach for Precise and Detailed Detection and Delineation of Faces and Facial Features

TL;DR: The appearance-based approach to face detection has seen great advances in the last several years, but this approach has had limited success in providing an accurate and detailed description of the internal facial features, i.e., eyes, brows, nose, and mouth.
References
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Journal ArticleDOI

A Computational Approach to Edge Detection

TL;DR: There is a natural uncertainty principle between detection and localization performance, which are the two main goals, and with this principle a single operator shape is derived which is optimal at any scale.
Journal ArticleDOI

Generalizing the hough transform to detect arbitrary shapes

TL;DR: It is shown how the boundaries of an arbitrary non-analytic shape can be used to construct a mapping between image space and Hough transform space, which makes the generalized Houghtransform a kind of universal transform which can beused to find arbitrarily complex shapes.
Book

Digital Picture Processing

TL;DR: The rapid rate at which the field of digital picture processing has grown in the past five years had necessitated extensive revisions and the introduction of topics not found in the original edition.
Journal ArticleDOI

Three-dimensional object recognition from single two-dimensional images

TL;DR: It is argued that similar mechanisms and constraints form the basis for recognition in human vision.

Finding Edges and Lines in Images

John Canny
TL;DR: This thesis is an attempt to formulate a set of edge detection criteria that capture as directly as possible the desirable properties of an edge operator.
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