Publication | Closed Access
Streamlined Dense Video Captioning
150
Citations
38
References
2019
Year
Unknown Venue
Natural Language ProcessingImage AnalysisMachine LearningEngineeringSequential VideoComputational LinguisticsVision Language ModelCoherent StorytellingVideo SummarizationVideo UnderstandingDense Video CaptioningDeep LearningCorpus LinguisticsVideo InterpretationComputer VisionMachine TranslationMulti-modal Summarization
Dense video captioning is an extremely challenging task since accurate and coherent description of events in a video requires holistic understanding of video contents as well as contextual reasoning of individual events. Most existing approaches handle this problem by first detecting event proposals from a video and then captioning on a subset of the proposals. As a result, the generated sentences are prone to be redundant or inconsistent since they fail to consider temporal dependency between events. To tackle this challenge, we propose a novel dense video captioning framework, which models temporal dependency across events in a video explicitly and leverages visual and linguistic context from prior events for coherent storytelling. This objective is achieved by 1) integrating an event sequence generation network to select a sequence of event proposals adaptively, and 2) feeding the sequence of event proposals to our sequential video captioning network, which is trained by reinforcement learning with two-level rewards - at both event and episode levels - for better context modeling. The proposed technique achieves outstanding performances on ActivityNet Captions dataset in most metrics.
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