Grounding spatial language for video search

Stefanie Tellex, T. Kollar, George Shaw, N. Roy, D. Roy
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引用次数: 21

Abstract

The ability to find a video clip that matches a natural language description of an event would enable intuitive search of large databases of surveillance video. We present a mechanism for connecting a spatial language query to a video clip corresponding to the query. The system can retrieve video clips matching millions of potential queries that describe complex events in video such as "people walking from the hallway door, around the island, to the kitchen sink." By breaking down the query into a sequence of independent structured clauses and modeling the meaning of each component of the structure separately, we are able to improve on previous approaches to video retrieval by finding clips that match much longer and more complex queries using a rich set of spatial relations such as "down" and "past." We present a rigorous analysis of the system's performance, based on a large corpus of task-constrained language collected from fourteen subjects. Using this corpus, we show that the system effectively retrieves clips that match natural language descriptions: 58.3% were ranked in the top two of ten in a retrieval task. Furthermore, we show that spatial relations play an important role in the system's performance.
基于空间语言的视频搜索
找到与事件的自然语言描述相匹配的视频片段的能力,将使对大型监控视频数据库的直观搜索成为可能。我们提出了一种将空间语言查询与查询对应的视频片段连接起来的机制。该系统可以检索视频片段,匹配数百万个描述视频中复杂事件的潜在查询,例如“人们从走廊门走出来,绕过岛屿,走到厨房水槽”。通过将查询分解为一系列独立的结构化子句,并分别对结构的每个组成部分的含义进行建模,我们能够通过使用一组丰富的空间关系(如“down”和“past”)找到匹配更长的更复杂查询的片段,从而改进以前的视频检索方法。我们基于从14个主题中收集的任务约束语言的大型语料库,对系统的性能进行了严格的分析。使用这个语料库,我们发现系统有效地检索到符合自然语言描述的片段:58.3%的片段在检索任务中排名前两名。此外,我们还证明了空间关系在系统性能中起着重要作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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