METHODS AND SYSTEMS FOR GENERATING END-TO-END DE-SMOKING MODEL

The disclosure herein relates to methods and systems for generating an end-to-end de-smoking model for removing smoke present in a video. Conventional data-driven based de-smoking approaches are limited mainly due to lack of suitable training data. Further, the conventional data-driven based de-smok...

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Hauptverfasser: GUBBI LAKSHMINARASIMHA, JAYAVARDHANA RAMA, KANAKATTE GURUMURTHY, APARNA, SEEMAKURTHY, KARTHIK, GHOSE, AVIK, SENGAR, VARTIKA, SAMPATHKUMAR, VIVEK BANGALORE, JAYARAMAN, SRINIVSAN, PODUVAL, MURALI, PURUSHOTHAMAN, BALAMURALIDHAR
Format: Patent
Sprache:eng ; fre ; ger
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Zusammenfassung:The disclosure herein relates to methods and systems for generating an end-to-end de-smoking model for removing smoke present in a video. Conventional data-driven based de-smoking approaches are limited mainly due to lack of suitable training data. Further, the conventional data-driven based de-smoking approaches are not end-to-end for removing the smoke present in the video. The de-smoking model of the present disclosure is trained end-to-end with the use of synthesized smoky video frames that are obtained by source aware smoke synthesis approach. The end-to-end de-smoking model localize and remove the smoke present in the video, using dynamic properties of the smoke. Hence the end-to-end de-smoking model simultaneously identifies the regions affected with the smoke and performs the de-smoking with minimal artifacts. localized smoke removal and color restoration of a real-time video.