Sequential Monte Carlo methods have been a major breakthrough in the field of numerical signal processing for stochastic dynamical state-space systems with partial and noisy observations. However, these methods still present certain weaknesses. One of the most fundamental is the degeneracy of the filter due to the impoverishment of the particles: the prediction step allows the particles to explore the state-space and can lead to the impoverishment of the particles if this exploration is poorly conducted or when it conflicts with the following observation that will be used in the evaluation of the likelihood of each particle. In this article, in order to improve this last step within the framework of the classic bootstrap particle filter, we propose a simple approximation of the one step fixed-lag smoother. At each time iteration, we propose to perform additional simulations during the prediction step in order to improve the likelihood of the selected particles.
翻译:连续的蒙特卡洛方法在对随机动态状态-空间系统进行数字信号处理方面是一个重大突破,有部分和噪音的观测。但是,这些方法仍然存在某些弱点。最根本的一个方面是粒子贫化导致过滤器的退化:预测步骤允许粒子探索状态-空间,如果这种探索进行不当,或者如果它与在评估每个粒子的可能性时将使用的以下观测相冲突,则可能导致粒子的贫化。在本条中,为了在典型的靴子陷阱粒子过滤器框架内改进这一最后一步,我们建议简单接近一个步骤的固定渣子滑动器。每次循环时,我们提议在预测步骤期间进行更多的模拟,以提高所选粒子的可能性。