InterDigital
Summary
In this internship at the London AI Video Lab, the objective is to design computationally efficient video decoders in an AI-based video compression codec. Current AI-based video compression models outperform conventional codecs, like HEVC, VVC and AV1. However, this comes at the cost of impractical compute requirements: at decode, current AI-based video compression decoders are several orders of magnitude more complex than conventional video compression decoders. The goal of the internship is to design efficient AI-based decoders that leverage spatial sparsity to reduce their computational complexity.
This work will be seen as one step forward toward the deployment of end-to-end trained AI-based video compression models.
The goal will be to find and review potential existing methods of spatial sparsity in AI-based video models. In a second step, spatially sparse AI-based decoders will be designed, implemented and integrated into the London AI Video Lab's end-to-end...
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Qualifications
MSc in Computer Science, Machine Learning, Mathematics, Physics or a related field
Deep learning, computer vision, Python, PyTorch
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| Durée (Mois): |
6
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