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* [[Special_Sessions#ss5| SS5 Data Fusion Methods for Indoor Localization of People and Objects]] | * [[Special_Sessions#ss5| SS5 Data Fusion Methods for Indoor Localization of People and Objects]] | ||
* [[Special_Sessions#ss6| SS6 Directional Estimation]] | * [[Special_Sessions#ss6| SS6 Directional Estimation]] | ||
+ | * [[Special_Sessions#ss7| SS7 Space Object Detection, Tracking, Identification, and Classification]] | ||
+ | * [[Special_Sessions#ss8| SS8 Recent Advances in Estimation Performance Bounds and Applications]] | ||
+ | * [[Special_Sessions#ss9| SS9 Sequential Monte Carlo Methods for Complex Systems]] | ||
+ | * [[Special_Sessions#ss10| SS10 Multi-Level Fusion: bridging the gap between high and low level fusion]] | ||
</div> | </div> | ||
|} | |} | ||
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| style="border:1px solid transparent;" |<br /> | | style="border:1px solid transparent;" |<br /> | ||
|- | |- | ||
+ | |||
+ | <!-- FUSION 2016 Accepted Special Sessions --> | ||
+ | {| id="mp-upper" style="width: 80%; margin:4px 0 0 0; background:none; border-spacing: 0px;" | ||
+ | <div id="ss7"> | ||
+ | <!-- SS7 Space Object Detection, Tracking, Identification, and Classification --> | ||
+ | | 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 Space Object Detection, Tracking, Identification, and Classification</h2> | ||
+ | |- | ||
+ | | style="color:#000;" | <div id="mp-tfa" style="padding:2px 5px"> | ||
+ | '''Description:''' The operation of Earth-orbiting spacecraft has become increasingly difficult due to the proliferation of orbit debris and increased commercialization. This has been made evident by several collisions involving operational spacecraft in recent years. Maintaining sustainability of key orbit regimes, e.g., low-Earth, sun-synchronous, and geosynchronous orbits, requires improved tracking and prediction of up to hundreds of thousands of objects given sparse measurements in both space and time. Target identification and classification allows for better prediction and situational aware ness. Moreover, proper characterization of measurement assignments as well as the determination of measurement associations for maneuvering targets play a pivotal role in successful space situational awareness. Solutions to the problem will be interdisciplinary and require expertise in astrodynamics, computational sciences, information fusion, applied mathematics, and many other fields. | ||
+ | |||
+ | The primary goal of this session is to promote interaction between the astrodynamics and space situational awareness community with those conducting research in information fusion and multi-target tracking. The secondary goal is a gathering of the individuals performing research on the associated topics to present, discuss, and disseminate ideas related to solving the detection, tracking, identification, and classification problems in the context of space situational awareness. | ||
+ | |||
+ | |||
+ | '''Organizers:''' Kyle DeMars, Brandon Jones | ||
+ | </div> | ||
+ | |- | ||
+ | |} | ||
+ | | style="border:1px solid transparent;" |<br /> | ||
+ | |- | ||
+ | |||
+ | <!-- FUSION 2016 Accepted Special Sessions --> | ||
+ | {| id="mp-upper" style="width: 80%; margin:4px 0 0 0; background:none; border-spacing: 0px;" | ||
+ | <div id="ss8"></div> | ||
+ | <!-- SS8 Recent Advances in Estimation Performance Bounds and Applications --> | ||
+ | | 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:125%; font-weight:bold; border:1px solid #a3babf; text-align:left; color:#000; padding:0.2em 0.4em;">SS8 Recent Advances in Estimation Performance Bounds and Applications</h2> | ||
+ | |- | ||
+ | | style="color:#000;" | <div id="mp-tfa" style="padding:2px 5px"> | ||
+ | '''Description:''' The field of estimation performance bounds has a long history. The perhaps most prominent example is the Cramer-Rao Lower bound (CRLB) which nowadays finds widespread use. Even though CRLB itself is established, there are many emerging areas, where it has not been evaluated. Besides the CRLB, there are other bounds that are often tighter, i.e. they better predict the estimation performance, such as the Barankin bound or Weiss-Weinstein bound, which are often more difficult to compute, but have recently attracted considerable interest in the research community. | ||
+ | |||
+ | This special session aims at bringing together different experts in the field of estimation performance bounds to discuss the newest research results in this area. Of particular interest are developments of novel bounds, such as e.g. Bayesian bounds, non-Bayesian bounds, hybrid bounds, misspecified bounds, as well as new results for the CRLB with application to for instance target tracking, sensor networks, aerospace, or localization. | ||
+ | |||
+ | |||
+ | '''Organizers:''' Carsten Fritsche and Fredrik Gustafsson | ||
+ | |- | ||
+ | |} | ||
+ | | style="border:1px solid transparent;" |<br /> | ||
+ | |- | ||
+ | |||
+ | <!-- FUSION 2016 Accepted Special Sessions --> | ||
+ | {| id="mp-upper" style="width: 80%; margin:4px 0 0 0; background:none; border-spacing: 0px;" | ||
+ | <div id="ss9"></div> | ||
+ | <!-- SS9 Sequential Monte Carlo Methods for Complex Systems --> | ||
+ | | 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 Sequential Monte Carlo Methods for Complex Systems</h2> | ||
+ | |- | ||
+ | | style="color:#000;" | <div id="mp-tfa" style="padding:2px 5px"> | ||
+ | '''Description:''' The aim of this special session is to address challenging problems such as estimation for high-dimensional systems and systems with complex dynamics (inter-relationships) with Sequential Monte Carlo (SMC) methods. This session will get together experts from different areas and is aimed at presenting novel techniques, algorithms, approaches especially based on sequential Monte Carlo methods. Both theoretically oriented and application related works are welcomed. | ||
+ | |||
+ | '''Organizers:''' Lyudmila Mihaylova, Hans Driessen, Martin Ulmke, Fredrik Gustafsson, Fredrik Gunnarsson and Carsten Fritsche | ||
+ | |- | ||
+ | |} | ||
+ | | style="border:1px solid transparent;" |<br /> | ||
+ | |- | ||
+ | |||
+ | <!-- FUSION 2016 Accepted Special Sessions --> | ||
+ | {| id="mp-upper" style="width: 80%; margin:4px 0 0 0; background:none; border-spacing: 0px;" | ||
+ | <div id="ss10"></div> | ||
+ | <!-- SS10 Multi-Level Fusion: bridging the gap between high and low level fusion --> | ||
+ | | class="MainPageBG" style="width:100%; border:1px solid #fff784; background:#fffff7; vertical-align:top; color:#000;" | | ||
+ | {| id="mp-left" style="width:100%; vertical-align:top; background:#fffff7;" | ||
+ | | 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 #fff784; text-align:left; color:#000; padding:0.2em 0.4em;">SS10 Multi-Level Fusion: bridging the gap between high and low level fusion</h2> | ||
+ | |- | ||
+ | | style="color:#000;" | <div id="mp-tfa" style="padding:2px 5px"> | ||
+ | '''Description:''' The exploitation of all relevant information originating from a growing mass of heterogeneous sources, both device-based (sensors, video, etc.) and human-generated (text, voice, etc.), is a key factor for the production of timely, comprehensive and most accurate description of a situation or phenomenon. There is a growing need to effectively identify relevant information from the mass available, and exploit it through automatic fusion for timely, comprehensive and accurate situation awareness. Even if exploiting multiple sources, most fusion systems are developed for combing just one type of data (e.g. positional data) in order to achieve a certain goal (e.g. accurate target tracking) without considering other relevant information that could be of different origin, type, and with possibly very different representation (e.g. a priori knowledge, contextual knowledge, mission orders, risk maps, availability and coverage of sensing resources, etc.) but still very significant to augment the knowledge about observed entities. Very likely, this latter type of information could be considered of different fusion levels that rarely end up being systematically exploited automatically. The result is often stove-piped systems dedicated to a single fusion task with limited robustness. This is caused by the lack of an integrative approach for processing sensor data (low-level fusion) and semantically rich information (high-level fusion) in a holistic manner thus effectively implementing a multi-level processing architecture and fusion process. The proposed special session will bring together researchers working on fusion techniques and algorithms often considered to be at different and disjoint, fostering thus the discussion on the commonalities and differences in their research methodologies, and proposing viable multi-level fusion solutions to address challenging problems or relevant applications. | ||
+ | |||
+ | '''Organizers:''' Lauro Snidaro, Jesus Garcia, Wolfgang Koch | ||
+ | |- | ||
+ | |} | ||
+ | | style="border:1px solid transparent;" |<br /> | ||
+ | |- | ||
+ | |||
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Revision as of 17:07, 15 February 2016
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