2,300 research outputs found

    Estimating and exploiting the degree of independent information in distributed data fusion

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    Double counting is a major problem in distributed data fusion systems. To maintain flexibility and scalability, distributed data fusion algorithms should just use local information. However globally optimal solutions only exist in highly restricted circumstances. Suboptimal algorithms can be applied in a far wider range of cases, but can be very conservative. In this paper we present preliminary work to develop distributed data fusion algorithms that can estimate and exploit the correlations between the estimates stored in different nodes in a distributed data fusion network. We show that partial information can be modelled as kind of “overweighted” Covariance Intersection algorithm. We motivate the need for an adaptive scheme by analysing the correlation behaviour of a simple distributed data fusion network and show that it is complicated and counterintuitive. Two simple approaches to estimate the correlation structure are presented and their results analysed. We show that significant advantages can be obtained

    Avoiding negative depth in inverse depth bearing-only SLAM

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    In this paper we consider ways to alleviate negative estimated depth for the inverse depth parameterisation of bearing-only SLAM. This problem, which can arise even if the beacons are far from the platform, can cause catastrophic failure of the filter.We consider three strategies to overcome this difficulty: applying inequality constraints, the use of truncated second order filters, and a reparameterisation using the negative logarithm of depth. We show that both a simple inequality method and the use of truncated second order filters are succesful. However, the most robust peformance is achieved using the negative log parameterisation. ©2008 IEEE

    The common state filter for SLAM

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    This paper presents the Common State Filter (CSF), a novel and efficient suboptimal Multiple Hypothesis SLAM (MHSLAM) method for Kalman Filter-based SLAM algorithms. Conventional MHSLAM algorithms require the entire vehicle and map state to be copied for each hypothesis. The CSF, by contrast, maintains a single, common instance of the vast majority of the map and only copies the map portion that varies substantially across different hypotheses. We demonstrate the performance of the algorithm on the Victoria Park data set. ©2008 IEEE

    Federated AI for building AI Solutions across Multiple Agencies

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    The different sets of regulations existing for differ-ent agencies within the government make the task of creating AI enabled solutions in government dif-ficult. Regulatory restrictions inhibit sharing of da-ta across different agencies, which could be a significant impediment to training AI models. We discuss the challenges that exist in environments where data cannot be freely shared and assess tech-nologies which can be used to work around these challenges. We present results on building AI models using the concept of federated AI, which al-lows creation of models without moving the training data around.Comment: Presented at AAAI FSS-18: Artificial Intelligence in Government and Public Sector, Arlington, Virginia, US

    OSGAR: a scene graph with uncertain transformations

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    An important problem for augmented reality is registration error. No system can be perfectly tracked, calibrated or modeled. As a result, the overlaid graphics are not aligned perfectly with objects in the physical world. This can be distracting, annoying or confusing. In this paper, we propose a method for mitigating the effects of registration errors that enables application developers to build dynamically adaptive AR displays. Our solution is implemented in a programming toolkit called OSGAR. Built upon OpenSceneGraph (OSG), OSGAR statistically characterizes registration errors, monitors those errors and, when a set of criteria are met, dynamically adapts the display to mitigate the effects of the errors. Because the architecture is based on a scene graph, it provides a simple, familiar and intuitive environment for application developers. We describe the components of OSGAR, discuss how several proposed methods for error registration can be implemented, and illustrate its use through a set of examples

    A tracker alignment framework for augmented reality

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    To achieve accurate registration, the transformations which locate the tracking system components with respect to the environment must be known. These transformations relate the base of the tracking system to the virtual world and the tracking system's sensor to the graphics display. In this paper we present a unified, general calibration method for calculating these transformations. A user is asked to align the display with objects in the real world. Using this method, the sensor to display and tracker base to world transformations can be determined with as few as three measurements

    Nothing Special? (Activist) Design Skills for the 21st Century

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    Abstract This isn’t just a challenge for designers, but also for policy, design research and the representation of design through its exhibition or publication. Design is embracing new sets of skills that require extended thinking. In terms of design education, which plays a role in defining the skills necessary to designers, this dynamic is particularly challenging. In this article, rather than pursue traditional disciplinary fields – either to be found in the design profession or in its educational institutions – I move toward four conceptual frameworks that might help structure a way into considering where design skills for the 21st century might be directed. I do this in the context of increasing global resource constraints, the need to address climate change more thoughtfully and issues of social inequality and injustice that have become greater and more widespread over the past 30 years. These years have seen the growth of design in the context of the neoliberal economic and social system. Building away from this, we may see design as an active agent in forging post-neoliberal ways of living, acting and being. Abstract This isn’t just a challenge for designers, but also for policy, design research and the representation of design through its exhibition or publication. Design is embracing new sets of skills that require extended thinking. In terms of design education, which plays a role in defining the skills necessary to designers, this dynamic is particularly challenging. In this article, rather than pursue traditional disciplinary fields – either to be found in the design profession or in its educational institutions – I move toward four conceptual frameworks that might help structure a way into considering where design skills for the 21st century might be directed. I do this in the context of increasing global resource constraints, the need to address climate change more thoughtfully and issues of social inequality and injustice that have become greater and more widespread over the past 30 years. These years have seen the growth of design in the context of the neoliberal economic and social system. Building away from this, we may see design as an active agent in forging post-neoliberal ways of living, acting and being.&nbsp

    Recursive Estimation of Orientation Based on the Bingham Distribution

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    Directional estimation is a common problem in many tracking applications. Traditional filters such as the Kalman filter perform poorly because they fail to take the periodic nature of the problem into account. We present a recursive filter for directional data based on the Bingham distribution in two dimensions. The proposed filter can be applied to circular filtering problems with 180 degree symmetry, i.e., rotations by 180 degrees cannot be distinguished. It is easily implemented using standard numerical techniques and suitable for real-time applications. The presented approach is extensible to quaternions, which allow tracking arbitrary three-dimensional orientations. We evaluate our filter in a challenging scenario and compare it to a traditional Kalman filtering approach

    Unscented Orientation Estimation Based on the Bingham Distribution

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    Orientation estimation for 3D objects is a common problem that is usually tackled with traditional nonlinear filtering techniques such as the extended Kalman filter (EKF) or the unscented Kalman filter (UKF). Most of these techniques assume Gaussian distributions to account for system noise and uncertain measurements. This distributional assumption does not consider the periodic nature of pose and orientation uncertainty. We propose a filter that considers the periodicity of the orientation estimation problem in its distributional assumption. This is achieved by making use of the Bingham distribution, which is defined on the hypersphere and thus inherently more suitable to periodic problems. Furthermore, handling of non-trivial system functions is done using deterministic sampling in an efficient way. A deterministic sampling scheme reminiscent of the UKF is proposed for the nonlinear manifold of orientations. It is the first deterministic sampling scheme that truly reflects the nonlinear manifold of the orientation
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