Presented by
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Product Marketing Manager Radar Systems, NXP Semiconductors
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NXP Fellow, Technical Director Advanced Radar Solutions, NXP Semiconductors
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Senior Principal Engineer, Machine Learning, NXP Semiconductors
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Automotive Radar is a key sensor modality to enable higher levels of autonomous driving capabilities. The state-of-the-art algorithms for the direction of arrival (DoA) estimation use analytical signal processing methods like iterative sparse code analysis and other compressive sensing techniques as well as sparse array designs to achieve higher angular resolution.
These algorithms usually have a high computational and memory cost which makes it challenging to implement them on cost-sensitive automotive embedded devices. In this training, we discuss a method that combines both analytical radar signal processing and modern deep learning techniques to create a hybrid high-resolution DoA estimation model with a low computational cost and memory footprint.
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