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Dive into the research topics where Daniel Glasner is active.

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Featured researches published by Daniel Glasner.


international conference on computer vision | 2009

Super-resolution from a single image

Daniel Glasner; Shai Bagon; Michal Irani

Methods for super-resolution can be broadly classified into two families of methods: (i) The classical multi-image super-resolution (combining images obtained at subpixel misalignments), and (ii) Example-Based super-resolution (learning correspondence between low and high resolution image patches from a database). In this paper we propose a unified framework for combining these two families of methods. We further show how this combined approach can be applied to obtain super resolution from as little as a single image (with no database or prior examples). Our approach is based on the observation that patches in a natural image tend to redundantly recur many times inside the image, both within the same scale, as well as across different scales. Recurrence of patches within the same image scale (at subpixel misalignments) gives rise to the classical super-resolution, whereas recurrence of patches across different scales of the same image gives rise to example-based super-resolution. Our approach attempts to recover at each pixel its best possible resolution increase based on its patch redundancy within and across scales.


international conference on computer vision | 2011

Viewpoint-aware object detection and pose estimation

Daniel Glasner; Meirav Galun; Sharon Alpert; Ronen Basri; Gregory Shakhnarovich

We describe an approach to category-level detection and viewpoint estimation for rigid 3D objects from single 2D images. In contrast to many existing methods, we directly integrate 3D reasoning with an appearance-based voting architecture. Our method relies on a nonparametric representation of a joint distribution of shape and appearance of the object class. Our voting method employs a novel parametrization of joint detection and viewpoint hypothesis space, allowing efficient accumulation of evidence. We combine this with a re-scoring and refinement mechanism, using an ensemble of view-specific Support Vector Machines. We evaluate the performance of our approach in detection and pose estimation of cars on a number of benchmark datasets.


international conference on computer vision | 2013

Accurate Blur Models vs. Image Priors in Single Image Super-resolution

Netalee Efrat; Daniel Glasner; Alexander Apartsin; Boaz Nadler; Anat Levin

Over the past decade, single image Super-Resolution (SR) research has focused on developing sophisticated image priors, leading to significant advances. Estimating and incorporating the blur model, that relates the high-res and low-res images, has received much less attention, however. In particular, the reconstruction constraint, namely that the blurred and down sampled high-res output should approximately equal the low-res input image, has been either ignored or applied with default fixed blur models. In this work, we examine the relative importance of the image prior and the reconstruction constraint. First, we show that an accurate reconstruction constraint combined with a simple gradient regularization achieves SR results almost as good as those of state-of-the-art algorithms with sophisticated image priors. Second, we study both empirically and theoretically the sensitivity of SR algorithms to the blur model assumed in the reconstruction constraint. We find that an accurate blur model is more important than a sophisticated image prior. Finally, using real camera data, we demonstrate that the default blur models of various SR algorithms may differ from the camera blur, typically leading to over-smoothed results. Our findings highlight the importance of accurately estimating camera blur in reconstructing raw lowers images acquired by an actual camera.


computer vision and pattern recognition | 2011

Contour-based joint clustering of multiple segmentations

Daniel Glasner; Shiv Naga Prasad Vitaladevuni; Ronen Basri

We present an unsupervised, shape-based method for joint clustering of multiple image segmentations. Given two or more closely-related images, such as nearby frames in a video sequence or images of the same scene taken under different lighting conditions, our method generates a joint segmentation of the images. We introduce a novel contour-based representation that allows us to cast the shape-based joint clustering problem as a quadratic semi-assignment problem. Our score function is additive. We use complex-valued affinities to assess the quality of matching the edge elements at the exterior bounding contour of clusters, while ignoring the contributions of elements that fall in the interior of the clusters. We further combine this contour-based score with region information and use a linear programming relaxation to solve for the joint clusters. We evaluate our approach on the occlusion boundary data-set of Stein et al.


international conference on computer vision | 2015

Hot or Not: Exploring Correlations between Appearance and Temperature

Daniel Glasner; Pascal Fua; Todd E. Zickler; Lihi Zelnik-Manor

In this paper we explore interactions between the appearance of an outdoor scene and the ambient temperature. By studying statistical correlations between image sequences from outdoor cameras and temperature measurements we identify two interesting interactions. First, semantically meaningful regions such as foliage and reflective oriented surfaces are often highly indicative of the temperature. Second, small camera motions are correlated with the temperature in some scenes. We propose simple scene-specific temperature prediction algorithms which can be used to turn a camera into a crude temperature sensor. We find that for this task, simple features such as local pixel intensities outperform sophisticated, global features such as from a semantically-trained convolutional neural network.


energy minimization methods in computer vision and pattern recognition | 2011

High resolution segmentation of neuronal tissues from low depth-resolution EM imagery

Daniel Glasner; Tao Hu; Juan Nunez-Iglesias; Lou Scheffer; Shan Xu; Harald F. Hess; Richard D. Fetter; Dmitri B. Chklovskii; Ronen Basri

The challenge of recovering the topology of massive neuronal circuits can potentially be met by high throughput Electron Microscopy (EM) imagery. Segmenting a 3-dimensional stack of EM images into the individual neurons is difficult, due to the low depth-resolution in existing high-throughput EM technology, such as serial section Transmission EM (ssTEM). In this paper we propose methods for detecting the high resolution locations of membranes from low depth-resolution images. We approach this problem using both a method that learns a discriminative, over-complete dictionary and a kernel SVM. We test this approach on tomographic sections produced in simulations from high resolution Focused Ion Beam (FIB) images and on low depth-resolution images acquired with ssTEM and evaluate our results by comparing it to manual labeling of this data.


Siam Journal on Imaging Sciences | 2015

A Global Approach for Solving Edge-Matching Puzzles

Shahar Z. Kovalsky; Daniel Glasner; Ronen Basri

We consider apictorial edge-matching puzzles, in which the goal is to arrange a collection of puzzle pieces with colored edges so that the colors match along the edges of adjacent pieces. We devise an algebraic representation for this problem and provide conditions under which it exactly characterizes a puzzle. Using the new representation, we recast the combinatorial, discrete problem of solving puzzles as a global, polynomial system of equations with continuous variables. We further propose new algorithms for generating approximate solutions to the continuous problem by solving a sequence of convex relaxations.


Archive | 2010

Super-resolution from a single signal

Michal Irani; Daniel Glasner; Oded Shahar; Shai Bagon


Image and Vision Computing | 2012

Viewpoint-aware object detection and continuous pose estimation

Daniel Glasner; Meirav Galun; Sharon Alpert; Ronen Basri; Gregory Shakhnarovich


international conference on computer graphics and interactive techniques | 2014

A reflectance display

Daniel Glasner; Todd E. Zickler; Anat Levin

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Ronen Basri

Weizmann Institute of Science

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Anat Levin

Weizmann Institute of Science

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Gregory Shakhnarovich

Toyota Technological Institute at Chicago

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Wojciech Matusik

Massachusetts Institute of Technology

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Meirav Galun

Weizmann Institute of Science

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Michal Irani

Weizmann Institute of Science

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