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* [[Special_Sessions#ss5| SS5 Homotopy Methods in State Estimation]] | * [[Special_Sessions#ss5| SS5 Homotopy Methods in State Estimation]] | ||
* [[Special_Sessions#ss6| SS6 Data Fusion in Sensor-based Sorting]] | * [[Special_Sessions#ss6| SS6 Data Fusion in Sensor-based Sorting]] | ||
+ | * [[Special_Sessions#ss7| SS7 Multi-Robot Systems and Mobile Sensor Networks]] | ||
+ | * [[Special_Sessions#ss8| SS8 Multisensor Fusion Methods for Radiation Source Localization]] | ||
</div> | </div> | ||
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'''Description:''' Sensor-based sorting is an established technology for sorting of various products according to quality aspects. Fields of application include food processing, recycling, and industrial mineral processing. Selection of a sensor suitable for material characterization typically depends on the product under inspection as well as the sorting task itself. However, in many cases increased sorting performance is achieved by combining information retrieved from multiple different sensors, for example line-scan and area-scan cameras, near-infrared cameras, X-ray, 3D sensors, or hyperspectral cameras. Hence, sensor data needs to be fused to increase performance by putting information in a temporal and / or spatial context. This applies for systems including several sensors of the same kind as well as heterogeneous combinations. Additionally, sensor-based sorting systems are typically restricted in terms of the time being available to derive a sorting decision. Therefore, real-time capable information fusion methods are required. | '''Description:''' Sensor-based sorting is an established technology for sorting of various products according to quality aspects. Fields of application include food processing, recycling, and industrial mineral processing. Selection of a sensor suitable for material characterization typically depends on the product under inspection as well as the sorting task itself. However, in many cases increased sorting performance is achieved by combining information retrieved from multiple different sensors, for example line-scan and area-scan cameras, near-infrared cameras, X-ray, 3D sensors, or hyperspectral cameras. Hence, sensor data needs to be fused to increase performance by putting information in a temporal and / or spatial context. This applies for systems including several sensors of the same kind as well as heterogeneous combinations. Additionally, sensor-based sorting systems are typically restricted in terms of the time being available to derive a sorting decision. Therefore, real-time capable information fusion methods are required. | ||
− | '''Organizers:''' [mailto:georg.maier@iosb.fraunhofer.de Georg Maier],[mailto:Robin.Gruna@iosb.fraunhofer.de Robin Gruna] | + | '''Organizers:''' [mailto:georg.maier@iosb.fraunhofer.de Georg Maier], [mailto:Robin.Gruna@iosb.fraunhofer.de Robin Gruna] |
+ | |||
+ | |- | ||
+ | |} | ||
+ | | 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="ss7"> | ||
+ | <!-- SS7 Multi-Robot Systems and Mobile Sensor Networks --> | ||
+ | | class="MainPageBG" style="width:100%; border:1px solid #f36766; background:#f9d6c9; vertical-align:top; color:#000;" | | ||
+ | {| id="mp-left" style="width:100%; vertical-align:top; background:#f9d6c9;" | ||
+ | | style="padding:2px;" | <h2 id="mp-tfa-h2" style="margin:3px; background:#f5baa3; font-family:inherit; font-size:120%; font-weight:bold; border:1px solid #f36766; text-align:left; color:#000; padding:0.2em 0.4em;">SS7 Multi-Robot Systems and Mobile Sensor Networks</h2> | ||
+ | |- | ||
+ | | style="color:#000;" | <div id="mp-tfa" style="padding:2px 5px"> | ||
+ | '''Description:''' The objective of the special session is to provide an international forum for the discussion of recent developments and advances in the field of nmlti-robot systems and mobile sensor networks. In-depth discussions of relevant theories and applications related to multi-robot systems and mobile sensor networks are expected, including the presentatiol!l of results of applications to real-world land, sea, underwater, aerial and space multi-vehicle sys1tems, as well as strong theoretical contributions. Additionally, the special session welcomes papers that explore new ways of using visual sensors to solve problems in robotics. | ||
+ | |||
+ | '''Organizers:''' [mailto:Joachim.Horn@hsu-hh.de Joachim Horn], [mailto:hla@unr.edu Hung M.La], [mailto:gronemem@hsu-hh.de Marcus Grooemeyer], [mailto:adang@hsu-hh.de Anh Duc Dang] | ||
+ | </div> | ||
+ | |||
+ | |- | ||
+ | |} | ||
+ | | 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="ss8"></div> | ||
+ | <!-- SS8 Multisensor Fusion Methods for Radiation Source Localization --> | ||
+ | | class="MainPageBG" style="width:100%; border:1px solid #a3babf; background:#f5fdff; 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:#ceecf2; font-family:inherit; font-size:120%; font-weight:bold; border:1px solid #a3babf; text-align:left; color:#000; padding:0.2em 0.4em;">SS8 Multisensor Fusion Methods for Radiation Source Localization</h2> | ||
+ | |- | ||
+ | | style="color:#000;" | <div id="mp-tfa" style="padding:2px 5px"> | ||
+ | '''Description:''' Locating a dangerous source of penetrating (i.e., gamma and neutron) radiation in an urban environment is a critical mission for nuclear counterterrorism and emergency response. Traditional methods for localizing a radiation source have primarily relied on individual, non-networked radiation sensors whose responses are used by loosely coordinated operators to collaboratively locate the source. Recently, significant progress has been made in developing rigorous methods for simultaneously analyzing the response of a network of radiation sensors. This session will present recent work on the analysis of radiation sensor networks to optimize the resources and time required to locate a dangerous radiation source in an urban environment. | ||
+ | |||
+ | '''Organizers:''' [mailto:john_mattingly@ncsu.edu John Mattingly] | ||
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Revision as of 09:40, 23 May 2016
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