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    VidCutter

    VidCutter

    A modern yet simple multi-platform video cutter and joiner

    A modern, simple to use, constantly evolving and hella fast MEDIA CUTTER + JOINER w/ frame-accurate SmartCut technology, chapter support, media stream selection for audio + subtitle channels and blackdetect video filter support to automatically detect scene changes or skip commercials in digital TV recordings. Chapter support allows scene chapter names to be included in final media metadata. NOTE: results will only work in media players that support chapters. Flatpak release includes the latest stable versions of FFmpeg, libmpv, MediaInfo, and PyQt5 running on the KDE platform runtime.
    Downloads: 17 This Week
    Last Update:
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  • 2
    AviSynth AiUpscale v1.2.0

    AviSynth AiUpscale v1.2.0

    AviSynth+ implementation of Super-Resolution Convolutional Neural

    ...The low resolution images were generated using the bicubic filter with Catmull-Rom settings, which is the method commonly used for training super-resolution networks, including those tested here. Note however that as an exception to this, the Anime4K models were trained using the average area downsampling method. The AiUpscale models used for all datasets were the "Photo" models, except for the Manga109 dataset for which the "LineArt" models were used. In the same way, the Waifu2x cunet model was used for the Manga109 dataset, and the upconv_7 model for the rest.
    Downloads: 3 This Week
    Last Update:
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