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Dive into the research topics where Abel Gawel is active.

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Featured researches published by Abel Gawel.


international conference on robotics and automation | 2016

Point cloud descriptors for place recognition using sparse visual information

Titus Cieslewski; Elena Stumm; Abel Gawel; Mike Bosse; Simon Lynen; Roland Siegwart

Place recognition is a core component in simultaneous localization and mapping (SLAM), limiting positional drift over space and time to unlock precise robot navigation. Determining which previously visited places belong together continues to be a highly active area of research as robotic applications demand increasingly higher accuracies. A large number of place recognition algorithms have been proposed, capable of consuming a variety of sensor data including laser, sonar and depth readings. The best performing solutions, however, have utilized visual information by either matching entire images or parts thereof. Most commonly, vision based approaches are inspired by information retrieval and utilize 3D-geometry information about the observed scene as a post-verification step. In this paper we propose to use the 3D-scene information from sparse-visual feature maps directly at the core of the place recognition pipeline. We propose a novel structural descriptor which aggregates sparse triangulated landmarks from SLAM into a compact signature. The resulting 3D-features provide a discriminative fingerprint to recognize places over seasonal and viewpoint changes which are particularly challenging for approaches based on sparse visual descriptors. We evaluate our system on publicly available datasets and show how its complementary nature can provide an improvement over visual place recognition.


international conference on robotics and automation | 2017

Aerial picking and delivery of magnetic objects with MAVs

Abel Gawel; Mina Kamel; Tonci Novkovic; Jakob Widauer; Dominik Schindler; Benjamin Pfyffer von Altishofen; Roland Siegwart; Juan I. Nieto

Autonomous delivery of goods using a Micro Air Vehicle (MAV) is a difficult problem, as it poses high demand on the MAVs control, perception and manipulation capabilities. This problem is especially challenging if the exact shape, location and configuration of the objects are unknown. In this paper, we report our findings during the development and evaluation of a fully integrated system that is energy efficient and enables MAVs to pick up and deliver objects with partly ferrous surface of varying shapes and weights. This is achieved by using a novel combination of an electro-permanent magnetic gripper with a passively compliant structure and integration with detection, control and servo positioning algorithms. The systems ability to grasp stationary and moving objects was tested, as well as its ability to cope with different shapes of the object and external disturbances. We show that such a system can be successfully deployed in scenarios where an object with partly ferrous parts needs to be gripped and placed in a predetermined location.


international conference on robotics and automation | 2016

Non-uniform sampling strategies for continuous correction based trajectory estimation

Renaud Dubé; Hannes Sommer; Abel Gawel; Michael Bosse; Roland Siegwart

Sliding window estimation is widely used for online simultaneous localization and mapping. While increasing the sliding window size generally yields improved accuracy, it also comes at an increase in computational cost. In order to reduce this cost, we propose smarter non-uniform sampling of the trajectory representation over the sliding window. This non-uniform temporal resolution is possible with continuous-time representations that allow freely adjustable knots location. Four strategies for selecting the knots location are presented and evaluated based on a real data laser-odometry SLAM problem. The results clearly show that non-uniform distributions of knots can be superior to uniform distribution in terms of accuracy per computation time.


intelligent robots and systems | 2017

An online multi-robot SLAM system for 3D LiDARs

Renaud Dubé; Abel Gawel; Hannes Sommer; Juan I. Nieto; Roland Siegwart; Cesar Cadena

Using multiple cooperative robots is advantageous for time critical Search and Rescue (SaR) missions as they permit rapid exploration of the environment and provide higher redundancy than using a single robot. A considerable number of applications such as autonomous driving and disaster response could benefit from merging mapping data from several agents. Online multi-robot localization and mapping has mainly been addressed for robots equipped with cameras or 2D LiDARs. However, in unstructured and ill-lighted real-life scenarios, a mapping system can potentially benefit from a rich 3D geometric solution. In this work, we present an online localization and mapping system for multiple robots equipped with 3D LiDARs. This system is based on incremental sparse pose-graph optimization using sequential and place recognition constraints, the latter being identified using a 3D segment matching approach. The result is a unified representation of the world and relative robot trajectories. The complete system runs in real-time and is evaluated with two experiments in different environments: one urban and one disaster scenario. The system is available open source and easy-to-run demonstrations are publicly available.


international symposium on safety, security, and rescue robotics | 2017

3D registration of aerial and ground robots for disaster response: An evaluation of features, descriptors, and transformation estimation

Abel Gawel; Renaud Dubé; Hartmut Surmann; Juan I. Nieto; Roland Siegwart; Cesar Cadena

Global registration of heterogeneous ground and aerial mapping data is a challenging task. This is especially difficult in disaster response scenarios when we have no prior information on the environment and cannot assume the regular order of man-made environments or meaningful semantic cues. In this work we extensively evaluate different approaches to globally register UGV generated 3D point-cloud data from LiDAR sensors with UAV generated point-cloud maps from vision sensors. The approaches are realizations of different selections for: a) local features: key-points or segments; b) descriptors: FPFH, SHOT, or ESF; and c) transformation estimations: RANSAC or FGR. Additionally, we compare the results against standard approaches like applying ICP after a good prior transformation has been given. The evaluation criteria include the distance which a UGV needs to travel to successfully localize, the registration error, and the computational cost. In this context, we report our findings on effectively performing the task on two new Search and Rescue datasets. Our results have the potential to help the community take informed decisions when registering point-cloud maps from ground robots to those from aerial robots.


intelligent robots and systems | 2016

Structure-based vision-laser matching

Abel Gawel; Titus Cieslewski; Renaud Dubé; Mike Bosse; Roland Siegwart; Juan I. Nieto


ieee-ras international conference on humanoid robots | 2016

Free Gait — An architecture for the versatile control of legged robots

Peter Fankhauser; C. Dario Bellicoso; Christian Gehring; Renaud Dubé; Abel Gawel; Marco Hutter


international symposium on safety, security, and rescue robotics | 2016

3D localization, mapping and path planning for search and rescue operations

Renaud Dubé; Abel Gawel; Cesar Cadena; Roland Siegwart; Luigi Freda; Mario Gianni


international symposium on safety, security, and rescue robotics | 2018

Aerial-Ground collaborative sensing: Third-Person view for teleoperation

Abel Gawel; Yukai Lin; Théodore Koutros; Roland Siegwart; Cesar Cadena


international conference on robotics and automation | 2018

Multi-Agent Time-Based Decision-Making for the Search and Action Problem

Takahiro Miki; Marija Popovic; Abel Gawel; Gregory Hitz; Roland Siegwart

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