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Object Recognition Using Force Data Clustering and HMM Based Shape Recognition

Author : Masoumeh Kalantari Khandani
Publisher :
Page : 190 pages
File Size : 28,87 MB
Release : 2010
Category : Cluster analysis
ISBN :

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In this thesis the problem of detecting a known model object in a scene or database of images is addressed. We present two major components of a complete solution for this problem: a data clustering technique for image segmentation and feature extraction, and a shape recognition method. The presented novel data clustering method (Force) relies on the laws of electrostatic fields to find clusters of datapoints in a multiple-dimension space. Application of Force to image segmentation in gray level and color images is described in the thesis. We also show that Force can be successfully used for feature extraction from object images. We present a statistical shape matching method based on Hidden Markov Models (HMM) and then combine its recognition results with the recognition outcome of the Force based algorithm. We show improvement made when Force based features are added to the HMM based approach.

Object Detection with Deep Learning Models

Author : S Poonkuntran
Publisher : CRC Press
Page : 276 pages
File Size : 18,90 MB
Release : 2022-11-01
Category : Computers
ISBN : 1000686744

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Object Detection with Deep Learning Models discusses recent advances in object detection and recognition using deep learning methods, which have achieved great success in the field of computer vision and image processing. It provides a systematic and methodical overview of the latest developments in deep learning theory and its applications to computer vision, illustrating them using key topics, including object detection, face analysis, 3D object recognition, and image retrieval. The book offers a rich blend of theory and practice. It is suitable for students, researchers and practitioners interested in deep learning, computer vision and beyond and can also be used as a reference book. The comprehensive comparison of various deep-learning applications helps readers with a basic understanding of machine learning and calculus grasp the theories and inspires applications in other computer vision tasks. Features: A structured overview of deep learning in object detection A diversified collection of applications of object detection using deep neural networks Emphasize agriculture and remote sensing domains Exclusive discussion on moving object detection

Object Recognition

Author : M. Bennamoun
Publisher : Springer Science & Business Media
Page : 352 pages
File Size : 15,17 MB
Release : 2012-12-06
Category : Computers
ISBN : 1447137221

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Automatie object recognition is a multidisciplinary research area using con cepts and tools from mathematics, computing, optics, psychology, pattern recognition, artificial intelligence and various other disciplines. The purpose of this research is to provide a set of coherent paradigms and algorithms for the purpose of designing systems that will ultimately emulate the functions performed by the Human Visual System (HVS). Hence, such systems should have the ability to recognise objects in two or three dimensions independently of their positions, orientations or scales in the image. The HVS is employed for tens of thousands of recognition events each day, ranging from navigation (through the recognition of landmarks or signs), right through to communication (through the recognition of characters or people themselves). Hence, the motivations behind the construction of recognition systems, which have the ability to function in the real world, is unquestionable and would serve industrial (e.g. quality control), military (e.g. automatie target recognition) and community needs (e.g. aiding the visually impaired). Scope, Content and Organisation of this Book This book provides a comprehensive, yet readable foundation to the field of object recognition from which research may be initiated or guided. It repre sents the culmination of research topics that I have either covered personally or in conjunction with my PhD students. These areas include image acqui sition, 3-D object reconstruction, object modelling, and the matching of ob jects, all of which are essential in the construction of an object recognition system.

Toward Category-Level Object Recognition

Author : Jean Ponce
Publisher : Springer Science & Business Media
Page : 622 pages
File Size : 24,57 MB
Release : 2006-12-22
Category : Computers
ISBN : 3540687947

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This volume is a post-event proceedings volume and contains selected papers based on presentations given, and vivid discussions held, during two workshops held in Taormina in 2003 and 2004. The 30 thoroughly revised papers presented are organized in the following topical sections: recognition of specific objects, recognition of object categories, recognition of object categories with geometric relations, and joint recognition and segmentation.

An Introduction to Object Recognition

Author : Marco Alexander Treiber
Publisher : Springer Science & Business Media
Page : 210 pages
File Size : 49,72 MB
Release : 2010-07-23
Category : Computers
ISBN : 1849962359

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Rapid development of computer hardware has enabled usage of automatic object recognition in an increasing number of applications, ranging from industrial image processing to medical applications, as well as tasks triggered by the widespread use of the internet. Each area of application has its specific requirements, and consequently these cannot all be tackled appropriately by a single, general-purpose algorithm. This easy-to-read text/reference provides a comprehensive introduction to the field of object recognition (OR). The book presents an overview of the diverse applications for OR and highlights important algorithm classes, presenting representative example algorithms for each class. The presentation of each algorithm describes the basic algorithm flow in detail, complete with graphical illustrations. Pseudocode implementations are also included for many of the methods, and definitions are supplied for terms which may be unfamiliar to the novice reader. Supporting a clear and intuitive tutorial style, the usage of mathematics is kept to a minimum. Topics and features: presents example algorithms covering global approaches, transformation-search-based methods, geometrical model driven methods, 3D object recognition schemes, flexible contour fitting algorithms, and descriptor-based methods; explores each method in its entirety, rather than focusing on individual steps in isolation, with a detailed description of the flow of each algorithm, including graphical illustrations; explains the important concepts at length in a simple-to-understand style, with a minimum usage of mathematics; discusses a broad spectrum of applications, including some examples from commercial products; contains appendices discussing topics related to OR and widely used in the algorithms, (but not at the core of the methods described in the chapters). Practitioners of industrial image processing will find this simple introduction and overview to OR a valuable reference, as will graduate students in computer vision courses. Marco Treiber is a software developer at Siemens Electronics Assembly Systems, Munich, Germany, where he is Technical Lead in Image Processing for the Vision System of SiPlace placement machines, used in SMT assembly.

Generic Object Recognition Using Form And Function

Author : Kevin Bowyer
Publisher : World Scientific
Page : 154 pages
File Size : 47,35 MB
Release : 1996-02-29
Category : Computers
ISBN : 9814502847

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This monograph provides a detailed record of the “GRUFF” research project. The goal of the GRUFF project is to develop techniques for robotic vision systems to recognize objects by reasoning about their intended function rather than matching to a pre-defined database of 2-D object appearances or 3-D object shapes. The contributions of this work are: a demonstration of the feasibility of the “form and function” approach to reasoning about 3-D shapes; a demonstration of the concept of using a small number of knowledge primitives as component building blocks in creating a function-based definition of an object category; and an indexing mechanism to make processing for recognition more efficient without any substantial decrease in correctness of classification. Results are given for the analysis of over 500 3-D shape descriptions created with a solid modeling tool and over 200 shape descriptions extracted from real laser range finder images.

Fast Learning and Invariant Object Recognition

Author : Branko Soucek
Publisher : Wiley-Interscience
Page : 306 pages
File Size : 41,86 MB
Release : 1992-05-07
Category : Computers
ISBN :

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This applications-oriented book presents, for the first time, Learning-Generalization-Seeing-Recognition Hybrids. Numerous new learning algorithms are described, including holographic networks, adaptive decoupled momentum, feature construction, second-order gradient, and adaptive-symbolic methods. Object recognition systems in real-time applications are presented and include massively parallel and systolic array implementations. These systems exhibit up to 2 billion operations and over 300 billion connections per second. Position, scale and rotation invariant systems for industrial machine vision are presented, including testing of IC chips; flying object recognition; space shuttle and aircraft experiments; detection of moving objects; shape recognition in manufacturing; recognition of occluded objects; biomedical image classification; three-dimensional ultrasonic imaging in clinical ophthalmology, and others. New invariant object recognition paradigms include orthogonal sets of feature layers; higher-order neural networks; detection of movement-attention-tracking; landmark matching; segmentation of three-dimensional images; dynamic links on the reduced mesh of trees. Fast Learning and Invariant Object Recognition presents a unified treatment of material that has previously been scattered worldwide in a number of research reports, as well as previously unpublished methods and results from the IRIS (Integration of Reasoning, Informing and Serving) Group.

Guiding Object Recognition

Author : Timothy M. Lebo
Publisher :
Page : 162 pages
File Size : 37,20 MB
Release : 2005
Category : Computer vision
ISBN :

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This thesis presents a components-based object detection and localization algorithm for static images as well as a detailed analysis of the model dynamics during the localization process.