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Dive into the research topics where Anders Buch is active.

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Featured researches published by Anders Buch.


international conference on robotics and automation | 2013

Pose estimation using local structure-specific shape and appearance context

Anders Buch; Dirk Kraft; Joni-Kristian Kamarainen; Henrik Gordon Petersen; Norbert Krüger

We address the problem of estimating the alignment pose between two models using structure-specific local descriptors. Our descriptors are generated using a combination of 2D image data and 3D contextual shape data, resulting in a set of semi-local descriptors containing rich appearance and shape information for both edge and texture structures. This is achieved by defining feature space relations which describe the neighborhood of a descriptor. By quantitative evaluations, we show that our descriptors provide high discriminative power compared to state of the art approaches. In addition, we show how to utilize this for the estimation of the alignment pose between two point sets. We present experiments both in controlled and real-life scenarios to validate our approach.


international conference on robotics and automation | 2010

Refining grasp affordance models by experience

Renaud Detry; Dirk Kraft; Anders Buch; Norbert Krüger; Justus H. Piater

We present a method for learning object grasp affordance models in 3D from experience, and demonstrate its applicability through extensive testing and evaluation on a realistic and largely autonomous platform. Grasp affordance refers here to relative object-gripper configurations that yield stable grasps. These affordances are represented probabilistically with grasp densities, which correspond to continuous density functions defined on the space of 6D gripper poses. A grasp density characterizes an objects grasp affordance; densities are linked to visual stimuli through registration with a visual model of the object they characterize. We explore a batch-oriented, experience-based learning paradigm where grasps sampled randomly from a density are performed, and an importance-sampling algorithm learns a refined density from the outcomes of these experiences. The first such learning cycle is bootstrapped with a grasp density formed from visual cues. We show that the robot effectively applies its experience by downweighting poor grasp solutions, which results in increased success rates at subsequent learning cycles. We also present success rates in a practical scenario where a robot needs to repeatedly grasp an object lying in an arbitrary pose, where each pose imposes a specific reaching constraint, and thus forces the robot to make use of the entire grasp density to select the most promising achievable grasp.


computer vision and pattern recognition | 2014

In Search of Inliers: 3D Correspondence by Local and Global Voting

Anders Buch; Yang Yang; Norbert Krüger; Henrik Gordon Petersen

We present a method for finding correspondence between 3D models. From an initial set of feature correspondences, our method uses a fast voting scheme to separate the inliers from the outliers. The novelty of our method lies in the use of a combination of local and global constraints to determine if a vote should be cast. On a local scale, we use simple, low-level geometric invariants. On a global scale, we apply covariant constraints for finding compatible correspondences. We guide the sampling for collecting voters by downward dependencies on previous voting stages. All of this together results in an accurate matching procedure. We evaluate our algorithm by controlled and comparative testing on different datasets, giving superior performance compared to state of the art methods. In a final experiment, we apply our method for 3D object detection, showing potential use of our method within higher-level vision.


Industrial Robot-an International Journal | 2014

Solving peg-in-hole tasks by human demonstration and exception strategies

Fares J. Abu-Dakka; Bojan Nemec; Aljaž Kramberger; Anders Buch; Norbert Krüger; Ales Ude

Purpose – The purpose of this paper is to propose a new algorithm based on programming by demonstration and exception strategies to solve assembly tasks such as peg-in-hole. Design/methodology/approach – Data describing the demonstrated tasks are obtained by kinesthetic guiding. The demonstrated trajectories are transferred to new robot workspaces using three-dimensional (3D) vision. Noise introduced by vision when transferring the task to a new configuration could cause the execution to fail, but such problems are resolved through exception strategies. Findings – This paper demonstrated that the proposed approach combined with exception strategies outperforms traditional approaches for robot-based assembly. Experimental evaluation was carried out on Cranfield Benchmark, which constitutes a standardized assembly task in robotics. This paper also performed statistical evaluation based on experiments carried out on two different robotic platforms. Practical implications – The developed framework can have an...


SpringerPlus | 2016

Local shape feature fusion for improved matching, pose estimation and 3D object recognition

Anders Buch; Henrik Gordon Petersen; Norbert Krüger

We provide new insights to the problem of shape feature description and matching, techniques that are often applied within 3D object recognition pipelines. We subject several state of the art features to systematic evaluations based on multiple datasets from different sources in a uniform manner. We have carefully prepared and performed a neutral test on the datasets for which the descriptors have shown good recognition performance. Our results expose an important fallacy of previous results, namely that the performance of the recognition system does not correlate well with the performance of the descriptor employed by the recognition system. In addition to this, we evaluate several aspects of the matching task, including the efficiency of the different features, and the potential in using dimension reduction. To arrive at better generalization properties, we introduce a method for fusing several feature matches with a limited processing overhead. Our fused feature matches provide a significant increase in matching accuracy, which is consistent over all tested datasets. Finally, we benchmark all features in a 3D object recognition setting, providing further evidence of the advantage of fused features, both in terms of accuracy and efficiency.


English | 2015

Getting Context Back in Engineering Education

Anders Buch; Louis L. Bucciarelli

Discussions about reform in engineering education have mainly centered on issues of curriculum and didactics but these discussions rarely address fundamental questions about the nature and character of knowledge and learning. This neglect has led the discussions down the wrong track and failed to critique implicit and inadequate conceptions of knowledge and learning. Our discussion will draw upon John Dewey’s philosophy of human experience and inquiry as a resource that can remedy the neglect. This chapter thus focuses on learning and by example proposes ways that engineering knowledge and skills can be contextualized, taught – and learned.


Künstliche Intelligenz | 2014

Technologies for the Fast Set-Up of Automated Assembly Processes

Norbert Krüger; Ales Ude; Henrik Gordon Petersen; Bojan Nemec; Lars-Peter Ellekilde; Thiusius Rajeeth Savarimuthu; Jimmy Alison Rytz; Kerstin Fischer; Anders Buch; Dirk Kraft; Wail Mustafa; Eren Erdal Aksoy; Jeremie Papon; Aljaž Kramberger; Florentin Wörgötter

In this article, we describe technologies facilitating the set-up of automated assembly solutions which have been developed in the context of the IntellAct project (2011–2014). Tedious procedures are currently still required to establish such robot solutions. This hinders especially the automation of so called few-of-a-kind production. Therefore, most production of this kind is done manually and thus often performed in low-wage countries. In the IntellAct project, we have developed a set of methods which facilitate the set-up of a complex automatic assembly process, and here we present our work on tele-operation, dexterous grasping, pose estimation and learning of control strategies. The prototype developed in IntellAct is at a TRL4 (corresponding to ‘demonstration in lab environment’).


international conference on computer vision | 2017

Rotational Subgroup Voting and Pose Clustering for Robust 3D Object Recognition

Anders Buch; Lilita Kiforenko; Dirk Kraft

It is possible to associate a highly constrained subset of relative 6 DoF poses between two 3D shapes, as long as the local surface orientation, the normal vector, is available at every surface point. Local shape features can be used to find putative point correspondences between the models due to their ability to handle noisy and incomplete data. However, this correspondence set is usually contaminated by outliers in practical scenarios, which has led to many past contributions based on robust detectors such as the Hough transform or RANSAC. The key insight of our work is that a single correspondence between oriented points on the two models is constrained to cast votes in a 1 DoF rotational subgroup of the full group of poses, SE(3). Kernel density estimation allows combining the set of votes efficiently to determine a full 6 DoF candidate pose between the models. This modal pose with the highest density is stable under challenging conditions, such as noise, clutter, and occlusions, and provides the output estimate of our method. We first analyze the robustness of our method in relation to noise and show that it handles high outlier rates much better than RANSAC for the task of 6 DoF pose estimation. We then apply our method to four state of the art data sets for 3D object recognition that contain occluded and cluttered scenes. Our method achieves perfect recall on two LIDAR data sets and outperforms competing methods on two RGB-D data sets, thus setting a new standard for general 3D object recognition using point cloud data.


Robotica | 2017

Multi-View Object Instance Recognition in an Industrial Context

Wail Mustafa; Nicolas Pugeault; Anders Buch; Norbert Krüger

We present a fast object recognition system coding shape by viewpoint invariant geometric relations and appearance information. In our advanced industrial work-cell, the system can observe the work space of the robot by three pairs of Kinect and stereo cameras allowing for reliable and complete object information. From these sensors, we derive global viewpoint invariant shape features and robust color features making use of color normalization techniques. We show that in such a set-up, our system can achieve high performance already with a very low number of training samples, which is crucial for user acceptance and that the use of multiple views is crucial for performance. This indicates that our approach can be used in controlled but realistic industrial contexts that require—besides high reliability—fast processing and an intuitive and easy use at the end-user side.


Engineering Studies | 2016

Ideas of Holistic Engineering Meet Engineering Work Practices

Anders Buch

ABSTRACT This article critically reflects on the viability of the idea that reforming engineering education will result in more holistic engineering work practices. Drawing on an empirical study, the article aims to demonstrate that in order to change existing engineering work practices, it might be necessary to change engineers’ knowledge and skills; however, such changes are far from sufficient. Conditions and circumstances external to practitioners’ knowledge and skills are crucial if engineering work is to become more holistic. To illustrate this point, the article outlines an empirical study of a small team of professionals who engage in holistic engineering work practices in an engineering consultancy company. The work practices are investigated using a philosophical empirical method that inquires into the doings, sayings, and relatings of the practitioners. The study describes the practice architecture that shapes and is shaped by the practitioners’ activities, and it demonstrate how the practice landscape prevents enactments of holistic engineering work practices.

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Norbert Krüger

University of Southern Denmark

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Vibeke Andersen

University of Southern Denmark

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Dirk Kraft

University of Southern Denmark

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Henrik Gordon Petersen

University of Southern Denmark

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Lilita Kiforenko

University of Southern Denmark

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Ales Ude

Karlsruhe Institute of Technology

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Joni-Kristian Kamarainen

Tampere University of Technology

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Bojan Nemec

University of Ljubljana

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Frederik Hagelskjær

University of Southern Denmark

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