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Dive into the research topics where Roee Litman is active.

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Featured researches published by Roee Litman.


symposium on geometry processing | 2014

Supervised learning of bag-of-features shape descriptors using sparse coding

Roee Litman; Alexander M. Bronstein; Michael M. Bronstein; Umberto Castellani

We present a method for supervised learning of shape descriptors for shape retrieval applications. Many content‐based shape retrieval approaches follow the bag‐of‐features (BoF) paradigm commonly used in text and image retrieval by first computing local shape descriptors, and then representing them in a ‘geometric dictionary’ using vector quantization. A major drawback of such approaches is that the dictionary is constructed in an unsupervised manner using clustering, unaware of the last stage of the process (pooling of the local descriptors into a BoF, and comparison of the latter using some metric). In this paper, we replace the clustering with dictionary learning, where every atom acts as a feature, followed by sparse coding and pooling to get the final BoF descriptor. Both the dictionary and the sparse codes can be learned in the supervised regime via bi‐level optimization using a task‐specific objective that promotes invariance desired in the specific application. We show significant performance improvement on several standard shape retrieval benchmarks.


International Journal of Computer Vision | 2016

Shape Retrieval of Non-rigid 3D Human Models

David Pickup; Xianfang Sun; Paul L. Rosin; Ralph Robert Martin; Zhi-Quan Cheng; Zhouhui Lian; Masaki Aono; A. Ben Hamza; Alexander M. Bronstein; Michael M. Bronstein; S. Bu; Umberto Castellani; S. Cheng; Valeria Garro; Andrea Giachetti; Afzal Godil; Luca Isaia; Junwei Han; Henry Johan; L. Lai; Bo Li; Chen-Feng Li; Haisheng Li; Roee Litman; X. Liu; Ziwei Liu; Yijuan Lu; L. Sun; Gary K. L. Tam; Atsushi Tatsuma

Abstract3D models of humans are commonly used within computer graphics and vision, and so the ability to distinguish between body shapes is an important shape retrieval problem. We extend our recent paper which provided a benchmark for testing non-rigid 3D shape retrieval algorithms on 3D human models. This benchmark provided a far stricter challenge than previous shape benchmarks. We have added 145 new models for use as a separate training set, in order to standardise the training data used and provide a fairer comparison. We have also included experiments with the FAUST dataset of human scans. All participants of the previous benchmark study have taken part in the new tests reported here, many providing updated results using the new data. In addition, further participants have also taken part, and we provide extra analysis of the retrieval results. A total of 25 different shape retrieval methods are compared.


computer vision and pattern recognition | 2015

Inverting RANSAC: Global model detection via inlier rate estimation

Roee Litman; Simon Korman; Alexander M. Bronstein; Shai Avidan

This work presents a novel approach for detecting inliers in a given set of correspondences (matches). It does so without explicitly identifying any consensus set, based on a method for inlier rate estimation (IRE). Given such an estimator for the inlier rate, we also present an algorithm that detects a globally optimal transformation. We provide a theoretical analysis of the IRE method using a stochastic generative model on the continuous spaces of matches and transformations. This model allows rigorous investigation of the limits of our IRE method for the case of 2D-translation, further giving bounds and insights for the more general case. Our theoretical analysis is validated empirically and is shown to hold in practice for the more general case of 2D-affinities. In addition, we show that the combined framework works on challenging cases of 2D-homography estimation, with very few and possibly noisy inliers, where RANSAC generally fails.


computer vision and pattern recognition | 2017

Product Manifold Filter: Non-rigid Shape Correspondence via Kernel Density Estimation in the Product Space

Matthias Vestner; Roee Litman; Emanuele Rodolà; Alexander M. Bronstein; Daniel Cremers

Many algorithms for the computation of correspondences between deformable shapes rely on some variant of nearest neighbor matching in a descriptor space. Such are, for example, various point-wise correspondence recovery algorithms used as a post-processing stage in the functional correspondence framework. Such frequently used techniques implicitly make restrictive assumptions (e.g., nearisometry) on the considered shapes and in practice suffer from lack of accuracy and result in poor surjectivity. We propose an alternative recovery technique capable of guaranteeing a bijective correspondence and producing significantly higher accuracy and smoothness. Unlike other methods our approach does not depend on the assumption that the analyzed shapes are isometric. We derive the proposed method from the statistical framework of kernel density estimation and demonstrate its performance on several challenging deformable 3D shape matching datasets.


Computer Graphics Forum | 2015

Probably Approximately Symmetric: Fast Rigid Symmetry Detection With Global Guarantees

Simon Korman; Roee Litman; Shai Avidan; Alexander M. Bronstein

We present a fast algorithm for global rigid symmetry detection with approximation guarantees. The algorithm is guaranteed to find the best approximate symmetry of a given shape, to within a user‐specified threshold, with very high probability. Our method uses a carefully designed sampling of the transformation space, where each transformation is efficiently evaluated using a sublinear algorithm. We prove that the density of the sampling depends on the total variation of the shape, allowing us to derive formal bounds on the algorithms complexity and approximation quality. We further investigate different volumetric shape representations (in the form of truncated distance transforms), and in such a way control the total variation of the shape and hence the sampling density and the runtime of the algorithm. A comprehensive set of experiments assesses the proposed method, including an evaluation on the eight categories of the COSEG data set. This is the first large‐scale evaluation of any symmetry detection technique that we are aware of.


eurographics | 2015

Scalability of non-rigid 3D shape retrieval

Ivan Sipiran; Benjamin Bustos; Tobias Schreck; Alexander M. Bronstein; Sunghyun Choi; L. Lai; Haisheng Li; Roee Litman; L. Sun

Due to recent advances in 3D acquisition and modeling, increasingly large amounts of 3D shape data become available in many application domains. This rises not only the need for effective methods for 3D shape retrieval, but also efficient retrieval and robust implementations. Previous 3D retrieval challenges have mainly considered data sets in the range of a few thousands of queries. In the 2015 SHREC track on Scalability of 3D Shape Retrieval we provide a benchmark with more than 96 thousand shapes. The data set is based on a non-rigid retrieval benchmark enhanced by other existing shape benchmarks. From the baseline models, a large set of partial objects were automatically created by simulating a range-image acquisition process. Four teams have participated in the track, with most methods providing very good to near-perfect retrieval results, and one less complex baseline method providing fair performance. Timing results indicate that three of the methods including the latter baseline one provide near- interactive time query execution. Generally, the cost of data pre-processing varies depending on the method.


international conference on 3d vision | 2016

SpectroMeter: Amortized Sublinear Spectral Approximation of Distance on Graphs

Roee Litman; Alexander M. Bronstein

We present a method to approximate pairwise distance on a graph, having an amortized sub-linear complexity in its size. The proposed method follows the so called heat method due to Crane et al. The only additional input are the values of the eigenfunctions of the graph Laplacian at a subset of the vertices. Using these values we estimate a random walk from the source points, and normalize the result into a unit gradient function. The eigenfunctions are then used to synthesize distance values abiding by these constraints at desired locations. We show that this method works in practice on different types of inputs ranging from triangular meshes to general graphs. We also demonstrate that the resulting approximate distance is accurate enough to be used as the input to a recent method for intrinsic shape correspondence computation.


Innovations for Shape Analysis, Models and Algorithms | 2013

Stable Semi-local Features for Non-rigid Shapes

Roee Litman; Alexander M. Bronstein; Michael M. Bronstein

Feature-based analysis is becoming a very popular approach for geometric shape analysis. Following the success of this approach in image analysis, there is a growing interest in finding analogous methods in the 3D world. Maximally stable component detection is a low computation cost and high repeatability method for feature detection in images.In this study, a diffusion-geometry based framework for stable component detection is presented, which can be used for geometric feature detection in deformable shapes.The vast majority of studies of deformable 3D shapes models them as the two-dimensional boundary of the volume of the shape. Recent works have shown that a volumetric shape model is advantageous in numerous ways as it better captures the natural behavior of non-rigid deformations. We show that our framework easily adapts to this volumetric approach, and even demonstrates superior performance.A quantitative evaluation of our methods on the SHREC’10 and SHREC’11 feature detection benchmarks as well as qualitative tests on the SCAPE dataset show its potential as a source of high-quality features. Examples demonstrating the drawbacks of surface stable components and the advantage of their volumetric counterparts are also presented.


eurographics | 2011

SHREC 2011: robust feature detection and description benchmark

Edmond Boyer; Alexander M. Bronstein; Michael M. Bronstein; Benjamin Bustos; Tal Darom; Radu Horaud; Ingrid Hotz; Yosi Keller; Johannes Keustermans; Artiom Kovnatsky; Roee Litman; Jan Reininghaus; Ivan Sipiran; Dirk Smeets; Paul Suetens; Dirk Vandermeulen; Andrei Zaharescu; Valentin Zobel


computer vision and pattern recognition | 2012

Intrinsic shape context descriptors for deformable shapes

Iasonas Kokkinos; Michael M. Bronstein; Roee Litman; Alexander M. Bronstein

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Alexander M. Bronstein

Technion – Israel Institute of Technology

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L. Lai

Beijing Technology and Business University

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