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Enhanced Spatio-Temporal Interaction Learning for Video Deraining: A Faster and Better Framework

About

Video deraining is an important task in computer vision as the unwanted rain hampers the visibility of videos and deteriorates the robustness of most outdoor vision systems. Despite the significant success which has been achieved for video deraining recently, two major challenges remain: 1) how to exploit the vast information among continuous frames to extract powerful spatio-temporal features across both the spatial and temporal domains, and 2) how to restore high-quality derained videos with a high-speed approach. In this paper, we present a new end-to-end video deraining framework, named Enhanced Spatio-Temporal Interaction Network (ESTINet), which considerably boosts current state-of-the-art video deraining quality and speed. The ESTINet takes the advantage of deep residual networks and convolutional long short-term memory, which can capture the spatial features and temporal correlations among continuing frames at the cost of very little computational source. Extensive experiments on three public datasets show that the proposed ESTINet can achieve faster speed than the competitors, while maintaining better performance than the state-of-the-art methods.

Kaihao Zhang, Dongxu Li, Wenhan Luo, Wenqi Ren, Wei Liu• 2021

Related benchmarks

TaskDatasetResultRank
Object TrackingRVDT
IDF167.6
9
Video DerainingSyn-Complex
PSNR20.16
9
Video DerainingNTURain 7 (test)
PSNR37.48
9
Video DerainingSyn-Light
PSNR27.61
9
Video DerainingWeatherBench real-world
PSNR25.22
9
Object DetectionRVDT
mAP (YOLO-v3)40.71
9
Video DerainingRainSynLight25 36 (test)
PSNR36.12
9
Video DerainingRainSynComplex25 36 (test)
PSNR28.48
9
Video DerainingNTURain
Parameters (M)2.99e+7
9
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