Multimodal prediction results are essential for trajectory prediction task as there is no single correct answer for the future. Previous frameworks can be divided into three categories: regression, generation and classification frameworks. However, these frameworks have weaknesses in different aspects so that they cannot model the multimodal prediction task comprehensively. In this paper, we present a novel insight along with a brand-new prediction framework by formulating multimodal prediction into three steps: modality clustering, classification and synthesis, and address the shortcomings of earlier frameworks. Exhaustive experiments on popular benchmarks have demonstrated that our proposed method surpasses state-of-the-art works even without introducing social and map information. Specifically, we achieve 19.2% and 20.8% improvement on ADE and FDE respectively on ETH/UCY dataset. Our code will be made publicly availabe.
翻译:由于对未来没有单一的正确答案,多式预测结果对于轨迹预测任务至关重要。以前的框架可以分为三类:回归、生成和分类框架。然而,这些框架在不同方面有弱点,因此无法全面模拟多式预测任务。在本文中,我们提出了一个新的洞察力和全新的预测框架,将多式联运预测分为三个步骤:模式组合、分类和综合,并解决先前框架的缺陷。关于流行基准的详尽实验表明,即使不引入社会和地图信息,我们拟议的方法也超过了最新工艺。具体地说,我们在埃塞俄比亚经济和经济发展方案方面分别实现了19.2%和20.8%的改善。我们的代码将被公诸于众。