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Moving objects are present in many robotic applications. An accurate detection and motion estimation of these objects can be crucial for the success and safety of the robot and people surrounding it. This paper presents a new probabilistic framework for clustering dependent or relational data, applied to the problem of motion clustering and estimation. While conventional techniques such as scan differencing...
We present a new algorithm for solving the global localization problem called Frozen-Time Smoother (FTS). Time is 'frozen', in the sense that the belief always refers to the same time instant, instead of following a moving target, like Monte Carlo Localization does. This algorithm works in the case in which global localization is formulated as a smoothing problem, and a precise estimate of the incremental...
Smoothing and optimization approaches are an effective means for solving the simultaneous localization and mapping (SLAM) problem. Most of the existing techniques focus mainly on determining the most likely map and leave open how to efficiently compute the marginal covariances. These marginal covariances, however, are essential for solving the data association problem. In this paper we present a novel...
Building maps of the explored environment during a rescue application is important in order to locate the information acquired through robot sensors. A lot of work has been done on mapping 2D large environments, while the creation of 3D maps is still limited to simple and small environments, due to the costs of 3D sensors and of high computational requirements. In this paper we analyze the problem...
In this paper we present a novel technique to estimate the state of heterogeneous features from inaccurate sensors. The proposed approach exploits the reliability of the feature extraction process in the sensor model and uses a Rao-Blackwellized particle filter to address the data association problem. Experimental results show that the use of reliability improves performance by allowing the approach...
Recently, Rao-Blackwellized particle filters have become a popular tool to solve the simultaneous localization and mapping problem. This technique applies a particle filter in which each particle carries an individual map of the environment. Accordingly, a key issue is to reduce the number of particles and/or to make use of compact map representations. This paper presents an approximative but highly...
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