Deep Convolutional Compressed Sensing for LiDAR Depth Completion

03/23/2018
by   Nathaniel Chodosh, et al.
0

In this paper we consider the problem of estimating a dense depth map from a set of sparse LiDAR points. We use techniques from compressed sensing and the recently developed Alternating Direction Neural Networks (ADNNs) to create a deep recurrent auto-encoder for this task. Our architecture internally performs an algorithm for extracting multi-level convolutional sparse codes from the input which are then used to make a prediction. Our results demonstrate that with only two layers and 1800 parameters we are able to out perform all previously published results, including deep networks with orders of magnitude more parameters.

READ FULL TEXT

page 2

page 14

research
01/03/2016

Sparse Diffusion Steepest-Descent for One Bit Compressed Sensing in Wireless Sensor Networks

This letter proposes a sparse diffusion steepest-descent algorithm for o...
research
03/20/2020

What is the optimal depth for deep-unfolding architectures at deployment?

Recently, many iterative algorithms proposed for various applications su...
research
10/14/2020

An Alternative Thresholding Rule for Compressed Sensing

Compressed Sensing algorithms often make use of the hard thresholding op...
research
06/26/2021

Stochastic Parameterization using Compressed Sensing: Application to the Lorenz-96 Atmospheric Model

Growing set of optimization and regression techniques, based upon sparse...
research
08/25/2019

RandNet: deep learning with compressed measurements of images

Principal component analysis, dictionary learning, and auto-encoders are...
research
10/07/2018

Training Convolutional Neural Networks and Compressed Sensing End-to-End for Microscopy Cell Detection

Automated cell detection and localization from microscopy images are sig...
research
07/07/2019

Deep Exponential-Family Auto-Encoders

We consider the problem of learning recurring convolutional patterns fro...

Please sign up or login with your details

Forgot password? Click here to reset