TL;DR
This paper introduces the novel task of Referring Video Shadow Detection (RVSD), enabling segmentation of specific shadows in videos based on natural language prompts, supported by a new dataset and a specialized neural network model.
Contribution
It pioneers RVSD by creating the first dataset and proposing the RSM-Net model with innovative memory and attention mechanisms for improved shadow segmentation.
Findings
RSM-Net achieves state-of-the-art performance with a 4.4% IOU increase.
The dataset contains 86 videos and 15,011 descriptions, supporting RVSD research.
The approach enhances interactivity and precision in shadow detection tasks.
Abstract
Traditional shadow detectors often identify all shadow regions of static images or video sequences. This work presents the Referring Video Shadow Detection (RVSD), which is an innovative task that rejuvenates the classic paradigm by facilitating the segmentation of particular shadows in videos based on descriptive natural language prompts. This novel RVSD not only achieves segmentation of arbitrary shadow areas of interest based on descriptions (flexibility) but also allows users to interact with visual content more directly and naturally by using natural language prompts (interactivity), paving the way for abundant applications ranging from advanced video editing to virtual reality experiences. To pioneer the RVSD research, we curated a well-annotated RVSD dataset, which encompasses 86 videos and a rich set of 15,011 paired textual descriptions with corresponding shadows. To the best…
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Taxonomy
MethodsSoftmax · Attention Is All You Need · Sparse Evolutionary Training · Memory Network
