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Fast object localisation for mobile augmented reality applicationsTaylor, Simon John January 2012 (has links)
No description available.
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An automated vision system using a fast 2-dimensional moment invariants algorithm /Zakaria, Marwan F. January 1987 (has links)
No description available.
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Simultaneous Pose and Correspondence Problem for Visual ServoingChiu, Raymond January 2010 (has links)
Pose estimation is a common problem in computer vision. The pose is the combination of the position and orientation of a particular object relative to some reference coordinate system. The pose estimation problem involves determining the pose of an object from one or multiple images of the object. This problem often arises in the area of robotics. It is necessary to determine the pose of an object before it can be manipulated by the robot. In particular, this research focuses on pose estimation for initialization of position-based visual servoing.
A closely related problem is the correspondence problem. This is the problem of finding a set of features from the image of an object that can be identified as the same feature from a model of the object. Solving for pose without known corre- spondence is also refered to as the simultaneous pose and correspondence problem, and it is a lot more difficult than solving for pose with known correspondence.
This thesis explores a number of methods to solve the simultaneous pose and correspondence problem, with focuses on a method called SoftPOSIT. It uses the idea that the pose is easily determined if correspondence is known. It first produces an initial guess of the pose and uses it to determine a correspondence. With the correspondence, it determines a new pose. This new pose is assumed to be a better estimate, thus a better correspondence can be determined. The process is repeated until the algorithm converges to a correspondence pose estimate. If this pose estimate is not good enough, the algorithm is restarted with a new initial guess.
An improvement is made to this algorithm. An early termination condition is added to detect conditions where the algorithm is unlikely to converge towards a good pose. This leads to an reduction in the runtime by as much as 50% and improvement in the success rate of the algorithm by approximately 5%.
The proposed solution is tested and compared with the RANSAC method and simulated annealing in a simulation environment. It is shown that the proposed solution has the potential for use in commercial environments for pose estimation.
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A System For Automated Vision-guided SuturingIyer, Santosh 15 November 2013 (has links)
Suturing in laparoscopic surgery is a challenging and time-consuming task that presents haptic, motor and spatial constraints for the surgeon. As a result, there is variability in surgical outcome when performing basic suturing tasks such as knot tying, stitching and tissue dissection (as large as 50\%).
This goal of this thesis is to develop a standardized, proof-of-concept, automated robotic suturing system that performs a side-to-side anastomosis with image guidance and dynamic trajectory control. A passive alignment tool is created for rigidly constraining needle pose, and robust computer vision algorithms are used to track surface features and the suture needle. A robotic system integrates these components to autonomously pass a curved suture needle through sequential loops in a tissue pad phantom.
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Underwater Stereo Matching and its CalibrationGedge, Jason Unknown Date
No description available.
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Active Shape Model Segmentation of Brain Structures in MR Images of Subjects with Fetal Alcohol Spectrum DisorderEicher, Anton 01 December 2010 (has links)
Fetal Alcohol Spectrum Disorder (FASD) is the most common form of preventable mental retardation worldwide. This condition affects children whose mothers excessively consume alcohol whilst pregnant. FASD can be identied by physical and mental defects, such as stunted growth, facial deformities, cognitive impairment, and behavioural abnormalities. Magnetic Resonance Imaging provides a non-invasive means to study the neural correlates of FASD. One such approach aims to detect brain abnormalities through an assessment of volume and shape of sub-cortical structures on high-resolution MR images. Two brain structures of interest are the Caudate Nucleus and Hippocampus. Manual segmentation of these structures is time-consuming and subjective. We therefore present a method for automatically segmenting the Caudate Nucleus and Hippocampus from high-resolution MR images captured as part of an ongoing study into the neural correlates of FASD.
Our method incorporates an Active Shape Model (ASM), which is used to learn shape variation from manually segmented training data. A discrete Geometrically Deformable Model (GDM) is rst deformed to t the relevant structure in each training set. The vertices belonging to each GDM are then used as 3D landmark points - effectively generating point correspondence between training models. An ASM is then created from the landmark points. This ASM is only able to deform to t structures with similar shape to those found in the training data. There are many variations of the standard ASM technique - each suited to the segmentation of data with particular characteristics. Experiments were conducted on the image search phase of ASM segmentation, in order to find the technique best suited to segmentation of the research data. Various popular image search techniques were tested, including an edge detection method and a method based on grey prole Mahalanobis distance measurement.
A heuristic image search method, especially designed to target Caudate Nuclei and Hippocampi, was also developed and tested. This method was extended to include multisampling of voxel proles. ASM segmentation quality was evaluated according to various quantitative metrics, including: overlap, false positives, false negatives, mean squared distance and Hausdorff distance.
Results show that ASMs that use the heuristic image search technique, without multisampling, produce the most accurate segmentations. Mean overlap for segmentation of the various target structures ranged from 0.76 to 0.82. Mean squared distance ranged from 0.72 to 0.76 - indicating sub-1mm accuracy, on average. Mean Hausdorff distance ranged from 2:7mm to 3:1mm.
An ASM constructed using our heuristic technique will enable researchers to quickly, reliably, and automatically segment test data for use in the FASD study - thereby facilitating a better understanding of the eects of this unfortunate condition.
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An architecture for intelligent robotic sensor fusionMurphy, Robin Roberson January 1992 (has links)
No description available.
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Orientational filters for real-time computer vision problemsKubota, Toshiro 12 1900 (has links)
No description available.
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Accelerated partial window imaging in an integrated vision unitHenderson, Drake Hall 08 1900 (has links)
No description available.
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High-speed sub-pixel edge measurements using systematic, calibrated correctionsLondoño, Mateo 12 1900 (has links)
No description available.
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