In this study, a semi-automatic video annotation method is proposed which utilizes temporal information to eliminate false-positives with a tracking-by-detection approach by employing multiple hypothesis tracking (MHT). MHT method automatically forms tracklets which are confirmed by human operators to enlarge the training set. A novel incremental learning approach helps to annotate videos in an iterative way. The experiments performed on AUTH Multidrone Dataset reveals that the annotation workload can be reduced up to 96% by the proposed approach.
翻译:在这项研究中,提议采用半自动录像说明方法,利用时间信息消除假阳性者,通过采用多重假设跟踪(MHT)方法进行跟踪和逐次检测。 MHT方法自动形成跟踪器,经人类操作者确认,以扩大培训组。一种新的渐进式学习方法有助于以迭接方式对录像进行批注。在AUTH多德罗内数据集上进行的实验显示,拟议方法可以将批注工作量减少到96%。