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Article
Augmented Autoencoders: Implicit 3D Orientation Learning for 6D Object Detection
We propose a real-time RGB-based pipeline for object detection and 6D pose estimation. Our novel 3D orientation estimation is based on a variant of the Denoising Autoencoder that is trained on simulated views ...
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Article
Open AccessTowards Autonomous Planetary Exploration
Planetary exploration poses many challenges for a robot system: From weight and size constraints to extraterrestrial environment conditions, which constrain the suitable sensors and actuators. As the distance ...
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Chapter and Conference Paper
Applicability of Deep Learned vs Traditional Features for Depth Based Classification
In robotic applications, highly specific objects such as industrial parts, for example, often need to be recognized. In these cases methods can’t rely on the online availability of large labeled training data ...
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Article
Improving object orientation estimates by considering multiple viewpoints
This article describes a probabilistic approach for improving the accuracy of general object pose estimation algorithms. We propose a histogram filter variant that uses the exploration capabilities of robots, ...
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Chapter and Conference Paper
Implicit 3D Orientation Learning for 6D Object Detection from RGB Images
We propose a real-time RGB-based pipeline for object detection and 6D pose estimation. Our novel 3D orientation estimation is based on a variant of the Denoising Autoencoder that is trained on simulated views ...
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Chapter and Conference Paper
On the Use of the Tree Structure of Depth Levels for Comparing 3D Object Views
Today the simple availability of 3D sensory data, the evolution of 3D representations, and their application to object recognition and scene analysis tasks promise to improve autonomy and flexibility of robots...
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Chapter
RoboSherlock: Unstructured Information Processing Framework for Robotic Perception
A pressing question when designing intelligent autonomous systems is how to integrate the various subsystems concerned with complementary tasks. Robotic vision must provide task relevant information about the ...
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Chapter
Interactive Segmentation of Textured and Textureless Objects
This article describes interactive object segmentation for autonomous service robots acting in human living environments. The proposed system allows a robot to effectively segment textured and textureless obje...
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Article
Part-Based Geometric Categorization and Object Reconstruction in Cluttered Table-Top Scenes
This paper presents an approach for 3D geometry-based object categorization in cluttered table-top scenes. In our method, objects are decomposed into different geometric parts whose spatial arrangement is repr...
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Chapter and Conference Paper
Object Categorization in Clutter Using Additive Features and Hashing of Part-Graph Descriptors
Detecting objects in clutter is an important capability for a household robot executing pick and place tasks in realistic settings. While approaches from 2D vision work reasonably well under certain lighting c...
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Chapter and Conference Paper
Reconstruction and Verification of 3D Object Models for Gras**
In this paper we present a method for approximating complete models of objects with 3D shape primitives, by exploiting common symmetries in objects of daily use. Our proposed approach reconstructs boxes and cy...