In this paper, a novel image moments based model for shape estimation and tracking of an object moving with a complex trajectory is presented. The camera is assumed to be stationary looking at a moving object. Point features inside the object are sampled as measurements. An ellipsoidal approximation of the shape is assumed as a primitive shape. The shape of an ellipse is estimated using a combination of image moments. Dynamic model of image moments when the object moves under the constant velocity or coordinated turn motion model is derived as a function for the shape estimation of the object. An Unscented Kalman Filter-Interacting Multiple Model (UKF-IMM) filter algorithm is applied to estimate the shape of the object (approximated as an ellipse) and track its position and velocity. A likelihood function based on average log-likelihood is derived for the IMM filter. Simulation results of the proposed UKF-IMM algorithm with the image moments based models are presented that show the estimations of the shape of the object moving in complex trajectories. Comparison results, using intersection over union (IOU), and position and velocity root mean square errors (RMSE) as metrics, with a benchmark algorithm from literature are presented. Results on real image data captured from the quadcopter are also presented.
翻译:在本文中,展示了一个基于图像的新型模型,用于以复杂轨迹对物体进行形状估计和跟踪。相机假定是静止地对移动对象进行观察。物体内的点特征作为测量结果进行取样。形状的光线近似值被假定为原始形状。椭圆形的形状是使用图像瞬时的组合来估计的。当物体在恒定速度或协调的转动模式下移动时的图像瞬时的动态模型被作为该物体的形状估计函数。一个不鼓励的卡尔曼过滤器-相互作用多模型(UKF-IMM)过滤器算法被应用来估计物体的形状(近似于椭圆)并跟踪其位置和速度。一个基于平均日志相似度的形状功能被假定为图像瞬时的形状。模拟结果显示物体在复杂轨迹中移动时的形状估计。比较结果,使用交错的交集(IOUU),以及位置和速度深度根基多模型的过滤算法用于估计对象的形状。根据平均日志模型所展示的数据,也是从真实图像中采集的基数。