BEGIN:VCALENDAR VERSION:2.0 PRODID:-//132.216.98.100//NONSGML kigkonsult.se iCalcreator 2.20.4// BEGIN:VEVENT UID:20260522T064957EDT-0172mIz6rT@132.216.98.100 DTSTAMP:20260522T104957Z DESCRIPTION:Abstract\n\n \n\nTexture-flow are locally dense parallel patter ns common in natural images. The texture-flow structure of an image is the trace of intrinsic properties of the objects in a scene\, and understandi ng it is a crucial step in the human perception of an image. High-level pe rceptual tasks involving recognition\, detection\, classification and segm entation also rely upon the notion of texture-flow. In the past decades\, researchers have proposed several computer vision methods for estimating t he texture-flow profile of an image. The current state-of-the-art techniqu es\, such as tensor-voting and relaxation-labeling come short of processin g sparse input images and cannot effectively manipulate scale. This thesis aims to provide a method for calculating the global texture-flow profile of sparse images and deal with the scale variation of the edge patterns in a natural image. In this thesis\, firstly\, the new angular orientation p robability distribution function (AOPDF) is proposed for representing the texture-flow profile of a natural image. At each location in the image\, A OPDF depicts the likelihood of the texture-flow and curvilinear angular-or ientations defined by a new two-parametric spatial angular orientation (AO ) function. Subsequently\, a new numerical method is proposed for estimati ng the AOPDF in digital images at discrete locations (pixels) and for a di screte set of angular-orientations. It is shown that AOPDF improves the re sults significantly when used for solving the challenging problem of singl e-image super-resolution. Furthermore\, the AOPDF is combined with an anti -aliasing filter and reformulated into a kernel form\, the so-called angul ar orientation of the edges (AngOri). The multi-scale AngOri kernels are i ntended to initialize the convolutional layers in deep neural networks (DN N)\, seamlessly. In a set of experiments\, the neural networks are trained for image segmentation and object detection tasks. In all cases\, the tra ined DNNs\, initialized with AngOri kernels\, achieve higher validation ac curacies\, especially when the training set is sparse. Finally\, a new ima ge reconstruction method is proposed for very sparse images\, where the te xture-flow could not be estimated from the image due to severe sparsity. T he missing parts of the image are constructed from a set of patterns chose n\, based on the similarity of local high-order statistics\, from the trai ning set. The image reconstruction results are significantly improved comp ared to the results obtained from existing methods. The new AOPDF\, AngOri \, and high-order stochastic methods introduced in this thesis are reliabl e alternatives for solving challenging computer vision tasks involving eit her sparse input images or training data.\n DTSTART:20231024T140000Z DTEND:20231024T160000Z LOCATION:Room 603\, McConnell Engineering Building\, CA\, QC\, Montreal\, H 3A 0E9\, 3480 rue University SUMMARY:PhD defence of Amir Abbas Haji Abolhassani – A new probabilistic mo del for representation of the texture-flow in natural images URL:/ece/channels/event/phd-defence-amir-abbas-haji-ab olhassani-new-probabilistic-model-representation-texture-flow-natural-3521 44 END:VEVENT END:VCALENDAR