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How do you remove background noise from a Youcut video editor? 

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Thus, Gaussian noise in video frames can be removed significantly by an adaptive thresholding technique.
The introduced method can successfully remove background noise effects.
The improved algorithm reduces the impact of background noise fluctuation.
Experimental results demonstrate that the proposed method can greatly suppress background noise.
Proceedings ArticleDOI
Yik Hing Fung, Yuk-Hee Chan 
18 Sep 2014
In this paper, we suggest producing green noise video halftones instead of blue noise video halftones.
While integrated into an existing video post processing pipeline, this noise reduction algorithm helps the video pipeline to pass the noise reduction test and detail preserving test in the industry widely used video post processing benchmark, HQV (Hollywood quality video processing for high definition).
A noise reduction technique to reduce background noise in noisy speech is proposed.
We present an integrated filter that reduces noise or sharpens details in a noisy video signal, depending on local image statistics.
Open accessJournal ArticleDOI
Wei Zhang, Wenhua Sun 
01 Jan 2021
13 Citations
The experimental results show that the algorithm can effectively remove strong background noise.
However Video-DDWA filter is not proper for removing the mixed noise.
Book ChapterDOI
07 May 2006
238 Citations
Experimental results of high quality composite video demonstrate the effectiveness of our background cut algorithm.
This paper presents a non-linear technique for noise reduction in video that is suitable for real-time processing.
Proceedings ArticleDOI
Zhixun Su, Hui Wang, Junjie Cao 
26 Jun 2009
29 Citations
The presented method is simple, stable and able to effectively remove large noise.
With the help of computer simulation we show that the proposed algorithm is able to well remove impulse noise in color video.
This new subtractive-type enhancement scheme has been tested and found to perform well, not only in variable background noise level condition, but also in fixed background noise level condition.
Film grain noise enhances the natural appearance of pictures in high-definition video and should be preserved in coded video.

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