O2NA: An Object-Oriented Non-Autoregressive Approach for Controllable Video Captioning
Fenglin Liu, Xuancheng Ren, Xian Wu, Bang Yang, Shen Ge, Yuexian Zou,, Xu Sun

TL;DR
O2NA introduces a novel object-oriented, non-autoregressive method for controllable video captioning that emphasizes focused objects, leading to more diverse and faster caption generation.
Contribution
The paper proposes a new non-autoregressive approach for controllable video captioning that effectively models focused objects and improves diversity and speed.
Findings
Achieves competitive results on MSR-VTT and MSVD datasets.
Demonstrates higher diversity in generated captions.
Provides faster inference compared to autoregressive methods.
Abstract
Video captioning combines video understanding and language generation. Different from image captioning that describes a static image with details of almost every object, video captioning usually considers a sequence of frames and biases towards focused objects, e.g., the objects that stay in focus regardless of the changing background. Therefore, detecting and properly accommodating focused objects is critical in video captioning. To enforce the description of focused objects and achieve controllable video captioning, we propose an Object-Oriented Non-Autoregressive approach (O2NA), which performs caption generation in three steps: 1) identify the focused objects and predict their locations in the target caption; 2) generate the related attribute words and relation words of these focused objects to form a draft caption; and 3) combine video information to refine the draft caption to a…
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Taxonomy
TopicsMultimodal Machine Learning Applications · Video Analysis and Summarization · Human Pose and Action Recognition
