Invention Grant
- Patent Title: Entropy coding in image and video compression using machine learning
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Application No.: US16287889Application Date: 2019-02-27
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Publication No.: US10652581B1Publication Date: 2020-05-12
- Inventor: Alexander Bokov , Hui Su
- Applicant: GOOGLE LLC
- Applicant Address: US CA Mountain View
- Assignee: GOOGLE LLC
- Current Assignee: GOOGLE LLC
- Current Assignee Address: US CA Mountain View
- Agency: Young Basile Hanlon & MacFarlane, P.C.
- Main IPC: H04N19/70
- IPC: H04N19/70 ; G06K9/46 ; H04N19/61 ; H04N19/13 ; H04N19/14 ; H04N19/176 ; G06T9/00 ; H04N19/18

Abstract:
Machine learning is used to refine a probability distribution for entropy coding video or image data. A probability distribution is determined for symbols associated with a video block (e.g., quantized transform coefficients, such as during encoding, or syntax elements from a bitstream, such as during decoding), and a set of features is extracted from video data associated with the video block and/or neighbor blocks. The probability distribution and the set of features are then processed using machine learning to produce a refined probability distribution. The video data associated with a video block are entropy coded according to the refined probability distribution. Using machine learning to refine the probability distribution for entropy coding minimizes the cross-entropy loss between the symbols to entropy code and the refined probability distribution.
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