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* [[Special_Sessions#ss7| SS7 Multi-Robot Systems and Mobile Sensor Networks]] | * [[Special_Sessions#ss7| SS7 Multi-Robot Systems and Mobile Sensor Networks]] | ||
* [[Special_Sessions#ss8| SS8 Multisensor Fusion Methods for Radiation Source Localization]] | * [[Special_Sessions#ss8| SS8 Multisensor Fusion Methods for Radiation Source Localization]] | ||
+ | * [[Special_Sessions#ss9| SS9 Multiple (Extended) Object Tracking]] | ||
+ | * [[Special_Sessions#ss10| SS10 Neurorobotics - a proposing perspective on synergies between neuroscience and robotics]] | ||
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| style="border:1px solid transparent;" |<br /> | | style="border:1px solid transparent;" |<br /> | ||
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+ | <!-- MFI 2016 Accepted Special Sessions --> | ||
+ | {| id="mp-upper" style="width: 100%; margin:4px 0 0 0; background:none; border-spacing: 0px;" | ||
+ | <div id="ss9"></div> | ||
+ | <!-- SS9 Multiple (Extended) Object Tracking --> | ||
+ | | class="MainPageBG" style="width:100%; border:1px solid #bdd6c6; background:#e7f7e7; vertical-align:top; color:#000;" | | ||
+ | {| id="mp-left" style="width:100%; vertical-align:top; background:#e7f7e76;" | ||
+ | | style="padding:2px;" | <h2 id="mp-tfa-h2" style="margin:3px; background:#d6efd6; font-family:inherit; font-size:120%; font-weight:bold; border:1px solid #bdd6c6; text-align:left; color:#000; padding:0.2em 0.4em;">SS9 Multiple (Extended) Object Tracking</h2> | ||
+ | |- | ||
+ | | style="color:#000;" | <div id="mp-tfa" style="padding:2px 5px"> | ||
+ | '''Description:''' Autonomous driver safety functions are standard in many modern cars, and semi-automated systems (e.g., traffic jam assist) are becoming more and more common. Construction of a driverless vehicle requires solutions to many different problems, among them multiple object tracking. The multiple object tracking problem is defined as keeping track of an unknown naumber of moving objects, and historically it has been focused on so called point objects which give at most one detection per time step. However, modern sensors have increasingly higher resolution, meaning that it is common to see multiple detections per object. For example, this is the case when automotive radar or lidar sensors are used. In order to be able to use point object algorithms for these sensors, heuristic clustering algorithms are applied to the raw measurements to obtain object hypotheses. In challenging scenarios, the hard decisions of the clustering algorithms affect the performance of the tracking algorithm due to the associated loss of information. | ||
+ | Consequently, so called extended object tracking algorithms which are capable of handling several measurements per object are required. This special session addresses recent results in the area of multiple object tracking for both point objects and especially extended objects. | ||
+ | |||
+ | |||
+ | '''Organizers:''' [mailto:karl.granstrom@chalmers.se Karl Granström], [mailto:stephan.reuter@uni-ulm.de Stephan Reuter], [mailto:marcus.baum@cs.uni-goettingen.de Marcus Baum] | ||
+ | |||
+ | |- | ||
+ | |} | ||
+ | | style="border:1px solid transparent;" |<br /> | ||
+ | |- | ||
+ | |||
+ | <!-- MFI 2016 Accepted Special Sessions --> | ||
+ | {| id="mp-upper" style="width: 100%; margin:4px 0 0 0; background:none; border-spacing: 0px;" | ||
+ | <div id="ss10"></div> | ||
+ | <!-- SS10 Neurorobotics - a proposing perspective on synergies between neuroscience and robotics --> | ||
+ | | class="MainPageBG" style="width:100%; border:1px solid #f2ea7e; background:#ffffe8; vertical-align:top; color:#000;" | | ||
+ | {| id="mp-left" style="width:100%; vertical-align:top; background:#ffffe8;" | ||
+ | | style="padding:2px;" | <h2 id="mp-tfa-h2" style="margin:3px; background:#fff7bd; font-family:inherit; font-size:120%; font-weight:bold; border:1px solid #f2ea7e; text-align:left; color:#000; padding:0.2em 0.4em;">SS10 Neurorobotics - a proposing perspective on synergies between neuroscience and robotics</h2> | ||
+ | |- | ||
+ | | style="color:#000;" | <div id="mp-tfa" style="padding:2px 5px"> | ||
+ | '''Description:''' Neurorobotics represents a research field allowing both, understanding of basic functionalities of the brain and the use of its basic principles for sensory motor controls of robots and other artifacts. Neuroscience is focusing on basic brain mechanisms supporting intelligent biological systems behavior, while neurorobotics attempts to apply these mechanisms for building adaptive controls for bio-inspired machines. Spiking neurons are used to implement basic sensor-motor controls with the capability of learning basic functionalities exploiting the synaptic variety with bio-inspired fine grained spiking neural computing techniques. Neurorobotics in the context of robot controls is under study since decades. Taking advantage from observed neuroscientific data and knowledge, spiking neural controls for robotic systems enabling robustness, adaptivity, sensor data fusion as well as some features of intelligent behaviour. On the other side, recent development in robotics and machine learning allows the use of robots for research in neuroscience as experimental platforms for testing of artificial brain models. Since several decades nervous system functionalities based on spiking neural networks are under research to understand biological systems but also to contribute to future technical applications in artificacts. Recently a number of projects like the US BRAIN Initiative and the European Human Brain Project have taken up the challenge by combining efforts from the fields of neuroscience and computer science to enable large scale modeling and simulation of biological neural networks with millions of spiking neurons. Special hardware and adequate software has been made available to address real-time experiments related to robot controls, vision mimiking the retina, haptics and its coupling with motoric neural control structures. This special session addresses advances in neuroscientific models for cognition and new perspectives in control for robotic applications based on both, biologically-inspired and artificial spiking neural networks. The final goal is to bring together researchers from both theory and experimental robotics interesting in cybernetics, neurorobotics and sensor-actor fusion processes. | ||
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+ | '''Organizers:''' [mailto:ruediger.dillmann@kit.edu Rüdiger Dillmann] | ||
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+ | |- | ||
+ | |} | ||
+ | | style="border:1px solid transparent;" |<br /> | ||
+ | |- | ||
+ | |||
+ | {{Organisation}} | ||
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Latest revision as of 10:36, 29 June 2016
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