Robust and fast post-processing of single-shot spin qubit detection
events with a neural network
- URL: http://arxiv.org/abs/2012.04686v2
- Date: Mon, 22 Mar 2021 12:21:57 GMT
- Title: Robust and fast post-processing of single-shot spin qubit detection
events with a neural network
- Authors: Tom Struck, Javed Lindner, Arne Hollmann, Floyd Schauer, Andreas
Schmidbauer, Dominique Bougeard, Lars R. Schreiber
- Abstract summary: We train neural networks to classify a collection of single-shot spin detection events.
We find an increase of 7 % in the visibility of the Rabi-oscillation when we employ a network trained by synthetic readout traces.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Establishing low-error and fast detection methods for qubit readout is
crucial for efficient quantum error correction. Here, we test neural networks
to classify a collection of single-shot spin detection events, which are the
readout signal of our qubit measurements. This readout signal contains a
stochastic peak, for which a Bayesian inference filter including Gaussian noise
is theoretically optimal. Hence, we benchmark our neural networks trained by
various strategies versus this latter algorithm. Training of the network with
10$^{6}$ experimentally recorded single-shot readout traces does not improve
the post-processing performance. A network trained by synthetically generated
measurement traces performs similar in terms of the detection error and the
post-processing speed compared to the Bayesian inference filter. This neural
network turns out to be more robust to fluctuations in the signal offset,
length and delay as well as in the signal-to-noise ratio. Notably, we find an
increase of 7 % in the visibility of the Rabi-oscillation when we employ a
network trained by synthetic readout traces combined with measured signal noise
of our setup. Our contribution thus represents an example of the beneficial
role which software and hardware implementation of neural networks may play in
scalable spin qubit processor architectures.
Related papers
- Deep Multi-Threshold Spiking-UNet for Image Processing [51.88730892920031]
This paper introduces the novel concept of Spiking-UNet for image processing, which combines the power of Spiking Neural Networks (SNNs) with the U-Net architecture.
To achieve an efficient Spiking-UNet, we face two primary challenges: ensuring high-fidelity information propagation through the network via spikes and formulating an effective training strategy.
Experimental results show that, on image segmentation and denoising, our Spiking-UNet achieves comparable performance to its non-spiking counterpart.
arXiv Detail & Related papers (2023-07-20T16:00:19Z) - NAF: Neural Attenuation Fields for Sparse-View CBCT Reconstruction [79.13750275141139]
This paper proposes a novel and fast self-supervised solution for sparse-view CBCT reconstruction.
The desired attenuation coefficients are represented as a continuous function of 3D spatial coordinates, parameterized by a fully-connected deep neural network.
A learning-based encoder entailing hash coding is adopted to help the network capture high-frequency details.
arXiv Detail & Related papers (2022-09-29T04:06:00Z) - SignalNet: A Low Resolution Sinusoid Decomposition and Estimation
Network [79.04274563889548]
We propose SignalNet, a neural network architecture that detects the number of sinusoids and estimates their parameters from quantized in-phase and quadrature samples.
We introduce a worst-case learning threshold for comparing the results of our network relative to the underlying data distributions.
In simulation, we find that our algorithm is always able to surpass the threshold for three-bit data but often cannot exceed the threshold for one-bit data.
arXiv Detail & Related papers (2021-06-10T04:21:20Z) - Adversarial Examples Detection with Bayesian Neural Network [57.185482121807716]
We propose a new framework to detect adversarial examples motivated by the observations that random components can improve the smoothness of predictors.
We propose a novel Bayesian adversarial example detector, short for BATer, to improve the performance of adversarial example detection.
arXiv Detail & Related papers (2021-05-18T15:51:24Z) - Lightweight Convolutional Neural Network with Gaussian-based Grasping
Representation for Robotic Grasping Detection [4.683939045230724]
Current object detectors are difficult to strike a balance between high accuracy and fast inference speed.
We present an efficient and robust fully convolutional neural network model to perform robotic grasping pose estimation.
The network is an order of magnitude smaller than other excellent algorithms.
arXiv Detail & Related papers (2021-01-25T16:36:53Z) - Deep Networks for Direction-of-Arrival Estimation in Low SNR [89.45026632977456]
We introduce a Convolutional Neural Network (CNN) that is trained from mutli-channel data of the true array manifold matrix.
We train a CNN in the low-SNR regime to predict DoAs across all SNRs.
Our robust solution can be applied in several fields, ranging from wireless array sensors to acoustic microphones or sonars.
arXiv Detail & Related papers (2020-11-17T12:52:18Z) - Enabling certification of verification-agnostic networks via
memory-efficient semidefinite programming [97.40955121478716]
We propose a first-order dual SDP algorithm that requires memory only linear in the total number of network activations.
We significantly improve L-inf verified robust accuracy from 1% to 88% and 6% to 40% respectively.
We also demonstrate tight verification of a quadratic stability specification for the decoder of a variational autoencoder.
arXiv Detail & Related papers (2020-10-22T12:32:29Z) - Rotation Averaging with Attention Graph Neural Networks [4.408728798697341]
We propose a real-time and robust solution to large-scale multiple rotation averaging.
Our method uses all observations, suppressing outliers effects through the use of weighted averaging and an attention mechanism within the network design.
The result is a network that is faster, more robust and can be trained with less samples than the previous neural approach.
arXiv Detail & Related papers (2020-10-14T02:07:19Z) - Robust Processing-In-Memory Neural Networks via Noise-Aware
Normalization [26.270754571140735]
PIM accelerators often suffer from intrinsic noise in the physical components.
We propose a noise-agnostic method to achieve robust neural network performance against any noise setting.
arXiv Detail & Related papers (2020-07-07T06:51:28Z) - Probabilistic spike propagation for FPGA implementation of spiking
neural networks [0.0]
We present an approach for spike propagation based on a probabilistic interpretation of weights, thus reducing memory accesses and updates.
We present an architecture and the trade-offs in accuracy on fully connected and convolutional networks for the MNIST and CIFAR10 datasets on the Xilinx Zynq platform.
arXiv Detail & Related papers (2020-01-07T06:55:57Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.