SPCVLGOct 7, 2021

Joint optimization of system design and reconstruction in MIMO radar imaging

arXiv:2110.03218v14 citations
Originality Incremental advance
AI Analysis

This work addresses cost reduction for MIMO radar in applications like automotive sensing, though it is incremental by adapting methods from optical computational imaging.

The authors tackled the high cost of MIMO radar systems by jointly optimizing antenna placement and neural-network-based image reconstruction, achieving improved reconstruction quality as demonstrated in their results.

Multiple-input multiple-output (MIMO) radar is one of the leading depth sensing modalities. However, the usage of multiple receive channels lead to relative high costs and prevent the penetration of MIMOs in many areas such as the automotive industry. Over the last years, few studies concentrated on designing reduced measurement schemes and image reconstruction schemes for MIMO radars, however these problems have been so far addressed separately. On the other hand, recent works in optical computational imaging have demonstrated growing success of simultaneous learning-based design of the acquisition and reconstruction schemes, manifesting significant improvement in the reconstruction quality. Inspired by these successes, in this work, we propose to learn MIMO acquisition parameters in the form of receive (Rx) antenna elements locations jointly with an image neural-network based reconstruction. To this end, we propose an algorithm for training the combined acquisition-reconstruction pipeline end-to-end in a differentiable way. We demonstrate the significance of using our learned acquisition parameters with and without the neural-network reconstruction.

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