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FlowText: Synthesizing Realistic Scene Text Video with Optical Flow Estimation

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arxiv 2305.03327 v1 pith:K4QBTW46 submitted 2023-05-05 cs.CV

FlowText: Synthesizing Realistic Scene Text Video with Optical Flow Estimation

classification cs.CV
keywords textvideoflowtextdataflowopticalestimationinformation
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Current video text spotting methods can achieve preferable performance, powered with sufficient labeled training data. However, labeling data manually is time-consuming and labor-intensive. To overcome this, using low-cost synthetic data is a promising alternative. This paper introduces a novel video text synthesis technique called FlowText, which utilizes optical flow estimation to synthesize a large amount of text video data at a low cost for training robust video text spotters. Unlike existing methods that focus on image-level synthesis, FlowText concentrates on synthesizing temporal information of text instances across consecutive frames using optical flow. This temporal information is crucial for accurately tracking and spotting text in video sequences, including text movement, distortion, appearance, disappearance, shelter, and blur. Experiments show that combining general detectors like TransDETR with the proposed FlowText produces remarkable results on various datasets, such as ICDAR2015video and ICDAR2013video. Code is available at https://github.com/callsys/FlowText.

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