Publication | Closed Access
Supervising Neural Attention Models for Video Captioning by Human Gaze Data
73
Citations
32
References
2017
Year
Unknown Venue
Artificial IntelligenceAttention MechanismsMachine LearningEngineeringVideo SummarizationAttentionHumans AttentionVideo CaptioningNatural Language ProcessingMultimodal LlmHuman Gaze DataVisual GroundingNeural Attention ModelsVisual Question AnsweringMachine TranslationAmazon Mechanical TurkVision Language ModelVideo UnderstandingDeep LearningComputer VisionEye Tracking
The attention mechanisms in deep neural networks are inspired by humans attention that sequentially focuses on the most relevant parts of the information over time to generate prediction output. The attention parameters in those models are implicitly trained in an end-to-end manner, yet there have been few trials to explicitly incorporate human gaze tracking to supervise the attention models. In this paper, we investigate whether attention models can benefit from explicit human gaze labels, especially for the task of video captioning. We collect a new dataset called VAS, consisting of movie clips, and corresponding multiple descriptive sentences along with human gaze tracking data. We propose a video captioning model named Gaze Encoding Attention Network (GEAN) that can leverage gaze tracking information to provide the spatial and temporal attention for sentence generation. Through evaluation of language similarity metrics and human assessment via Amazon mechanical Turk, we demonstrate that spatial attentions guided by human gaze data indeed improve the performance of multiple captioning methods. Moreover, we show that the proposed approach achieves the state-of-the-art performance for both gaze prediction and video captioning not only in our VAS dataset but also in standard datasets (e.g. LSMDC [24] and Hollywood2 [18]).
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