TY - JOUR A2 - Lin, Liang AU - Tirri, Anna Elena AU - Fasano, Giancarmine AU - Accardo, Domenico AU - Moccia, Antonio PY - 2014 DA - 2014/07/01 TI - Particle Filtering for Obstacle Tracking in UAS Sense and Avoid Applications SP - 280478 VL - 2014 AB - Obstacle detection and tracking is a key function for UAS sense and avoid applications. In fact, obstacles in the flight path must be detected and tracked in an accurate and timely manner in order to execute a collision avoidance maneuver in case of collision threat. The most important parameter for the assessment of a collision risk is the Distance at Closest Point of Approach, that is, the predicted minimum distance between own aircraft and intruder for assigned current position and speed. Since assessed methodologies can cause some loss of accuracy due to nonlinearities, advanced filtering methodologies, such as particle filters, can provide more accurate estimates of the target state in case of nonlinear problems, thus improving system performance in terms of collision risk estimation. The paper focuses on algorithm development and performance evaluation for an obstacle tracking system based on a particle filter. The particle filter algorithm was tested in off-line simulations based on data gathered during flight tests. In particular, radar-based tracking was considered in order to evaluate the impact of particle filtering in a single sensor framework. The analysis shows some accuracy improvements in the estimation of Distance at Closest Point of Approach, thus reducing the delay in collision detection. SN - 2356-6140 UR - https://doi.org/10.1155/2014/280478 DO - 10.1155/2014/280478 JF - The Scientific World Journal PB - Hindawi Publishing Corporation KW - ER -