Equivariant Priors for Compressed Sensing with Arash Behboodi
EPISODE 584
|
JULY
25,
2022
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About this Episode
Today we’re joined by Arash Behboodi, a machine learning researcher at Qualcomm Technologies. In our conversation with Arash, we explore his paper Equivariant Priors for Compressed Sensing with Unknown Orientation, which proposes using equivariant generative models as a prior as a means to show that signals with unknown orientations can be recovered with iterative gradient descent on the latent space of these models and provide additional theoretical recovery guarantees. We discuss the differences between compression and compressed sensing, how he was able to evolve a traditional VAE architecture to understand equivarience, and some of the research areas he’s applying this work to, including cryo-electron microscopy. We also discuss a few of the other papers that his colleagues have submitted to the conference, including Overcoming Oscillations in Quantization-Aware Training, Variational On-the-Fly Personalization, and CITRIS: Causal Identifiability from Temporal Intervened Sequences.
About the Guest
Arash Behboodi
Qualcomm
Resources
- Paper: Equivariant Priors for Compressed Sensing with Unknown Orientation
- Paper: Overcoming Oscillations in Quantization-Aware Training
- Paper: Variational On-the-Fly Personalization
- Paper: CITRIS: Causal Identifiability from Temporal Intervened Sequences
- Paper: Bayesian Optimization for Macro Placement
- Blog: Innovation at the Edge and in the Metaverse at Qualcomm
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