N-Omniglot is a large neuromorphic few-shot learning dataset

Overview

N-Omniglot

[Paper] || [Dataset]

N-Omniglot is a large neuromorphic few-shot learning dataset. It reconstructs strokes of Omniglot as videos and uses Davis346 to capture the writing of the characters. The recordings can be displayed using DV software's playback function (https://inivation.gitlab.io/dv/dv-docs/docs/getting-started.html). N-Omniglot is sparse and has little similarity between frames. It can be used for event-driven pattern recognition, few-shot learning and stroke generation.

It is a neuromorphic event dataset composed of 1623 handwritten characters obtained by the neuromorphic camera Davis346. Each type of character contains handwritten samples of 20 different participants. The file structure and sample can be found in the corresponding PNG files in samples.

The raw data can be found on the https://doi.org/10.6084/m9.figshare.16821427.

Structure

filestruct_00.pngsample_00

How to use N-Omniglot

We also provide an interface to this dataset in data_loader so that users can easily access their own applications using Pytorch, Python 3 is recommended.

  • NOmniglot.py: basic dataset
  • nomniglot_full.py: get full train and test loader, for direct to SCNN
  • nomniglot_train_test.py: split train and test loader, for Siamese Net
  • nomniglot_nw_ks.py: change into n-way k-shot, for MAML
  • utils.py: some functions

As with DVS-Gesture, each N-Omniglot raw file contains 20 samples of event information. The NOmniglot class first splits N-Omniglot dataset into single sample and stores in the event_npy folder for long-term use (reference SpikingJelly). Later, the event data will be encoded into different event frames according to different parameters. The main parameters include frame number and data type. The event type is used to output the event frame of the operation OR, and the float type is used to output the firing rate of each pixel.

Before you run this code, some packages need to be ready:

pip install dv
pip install pandas
torch
torchvision >= 0.8.1
  • use nomniglot_full:

db_train = NOmniglotfull('./data/', train=True, frames_num=4, data_type='frequency', thread_num=16)
dataloadertrain = DataLoader(db_train, batch_size=16, shuffle=True, num_workers=16, pin_memory=True)
for x_spt, y_spt, x_qry, y_qry in dataloadertrain:
    print(x_spt.shape)
  • use nomniglot_pair:

data_type = 'frequency'
T = 4
trainSet = NOmniglotTrain(root='data/', use_frame=True, frames_num=T, data_type=data_type, use_npz=True, resize=105)
testSet = NOmniglotTest(root='data/', time=1000, way=5, shot=1, use_frame=True, frames_num=T, data_type=data_type, use_npz=True, resize=105)
trainLoader = DataLoader(trainSet, batch_size=48, shuffle=False, num_workers=4)
testLoader = DataLoader(testSet, batch_size=5 * 1, shuffle=False, num_workers=4)
for batch_id, (img1, img2) in enumerate(testLoader, 1):
    # img1.shape [batch, T, 2, H, W]
    print(batch_id)
    break

for batch_id, (img1, img2, label) in enumerate(trainLoader, 1):
    # img1.shape [batch, T, 2, H, W]
    print(batch_id)
    break
  • use nomniglot_nw_ks:

db_train = NOmniglotNWayKShot('./data/', n_way=5, k_shot=1, k_query=15,
                                  frames_num=4, data_type='frequency', train=True)
dataloadertrain = DataLoader(db_train, batch_size=16, shuffle=True, num_workers=16, pin_memory=True)
for x_spt, y_spt, x_qry, y_qry in dataloadertrain:
    print(x_spt.shape)
db_train.resampling()

Experiment

method

We provide four modified SNN-appropriate few-shot learning methods in examples to provide a benchmark for N-Omniglot dataset. Different way, shot, data_type, frames_num can be choose to run the experiments. You can run a method directly in the PyCharm environment

Reference

[1] Yang Li, Yiting Dong, Dongcheng Zhao, Yi Zeng. N-Omniglot: a Large-scale Dataset for Spatio-temporal Sparse Few-shot Learning. figshare https://doi.org/10.6084/m9.figshare.16821427.v2 (2021).

[2] Yang Li, Yiting Dong, Dongcheng Zhao, Yi Zeng. N-Omniglot: a Large-scale Dataset for Spatio-temporal Sparse Few-shot Learning. arXiv preprint arXiv:2112.13230 (2021).

Breaking the Curse of Space Explosion: Towards Efficient NAS with Curriculum Search

Breaking the Curse of Space Explosion: Towards Effcient NAS with Curriculum Search Pytorch implementation for "Breaking the Curse of Space Explosion:

guoyong 17 Jan 03, 2023
QT Py Media Knob using rotary encoder & neopixel ring

QTPy-Knob QT Py USB Media Knob using rotary encoder & neopixel ring The QTPy-Knob features: Media knob for volume up/down/mute with "qtpy-knob.py" Cir

Tod E. Kurt 56 Dec 30, 2022
Fast and Context-Aware Framework for Space-Time Video Super-Resolution (VCIP 2021)

Fast and Context-Aware Framework for Space-Time Video Super-Resolution Preparation Dependencies PyTorch 1.2.0 CUDA 10.0 DCNv2 cd model/DCNv2 bash make

Xueheng Zhang 1 Mar 29, 2022
Code for our CVPR 2021 paper "MetaCam+DSCE"

Joint Noise-Tolerant Learning and Meta Camera Shift Adaptation for Unsupervised Person Re-Identification (CVPR'21) Introduction Code for our CVPR 2021

FlyingRoastDuck 59 Oct 31, 2022
Implementation for Simple Spectral Graph Convolution in ICLR 2021

Simple Spectral Graph Convolutional Overview This repo contains an example implementation of the Simple Spectral Graph Convolutional (S^2GC) model. Th

allenhaozhu 64 Dec 31, 2022
Behind the Curtain: Learning Occluded Shapes for 3D Object Detection

Behind the Curtain: Learning Occluded Shapes for 3D Object Detection Acknowledgement We implement our model, BtcDet, based on [OpenPcdet 0.3.0]. Insta

Qiangeng Xu 163 Dec 19, 2022
Based on Stockfish neural network(similar to LcZero)

MarcoEngine Marco Engine - interesnaya neyronnaya shakhmatnaya set', kotoraya ispol'zuyet metod samoobucheniya(dostizheniye khoroshoy igy putem proboy

Marcus Kemaul 4 Mar 12, 2022
The Official TensorFlow Implementation for SPatchGAN (ICCV2021)

SPatchGAN: Official TensorFlow Implementation Paper "SPatchGAN: A Statistical Feature Based Discriminator for Unsupervised Image-to-Image Translation"

39 Dec 30, 2022
A python implementation of Deep-Image-Analogy based on pytorch.

Deep-Image-Analogy This project is a python implementation of Deep Image Analogy.https://arxiv.org/abs/1705.01088. Some results Requirements python 3

Peng Lu 171 Dec 14, 2022
yolov5 deepsort 行人 车辆 跟踪 检测 计数

yolov5 deepsort 行人 车辆 跟踪 检测 计数 实现了 出/入 分别计数。 默认是 南/北 方向检测,若要检测不同位置和方向,可在 main.py 文件第13行和21行,修改2个polygon的点。 默认检测类别:行人、自行车、小汽车、摩托车、公交车、卡车。 检测类别可在 detect

554 Dec 30, 2022
Python package for dynamic system estimation of time series

PyDSE Toolset for Dynamic System Estimation for time series inspired by DSE. It is in a beta state and only includes ARMA models right now. Documentat

Blue Yonder GmbH 40 Oct 07, 2022
Official PyTorch implementation of MX-Font (Multiple Heads are Better than One: Few-shot Font Generation with Multiple Localized Experts)

Introduction Pytorch implementation of Multiple Heads are Better than One: Few-shot Font Generation with Multiple Localized Expert. | paper Song Park1

Clova AI Research 97 Dec 23, 2022
MediaPipeで姿勢推定を行い、Tokyo2020オリンピック風のピクトグラムを表示するデモ

Tokyo2020-Pictogram-using-MediaPipe MediaPipeで姿勢推定を行い、Tokyo2020オリンピック風のピクトグラムを表示するデモです。 Tokyo2020Pictgram02.mp4 Requirement mediapipe 0.8.6 or later O

KazuhitoTakahashi 295 Dec 26, 2022
Algorithms for outlier, adversarial and drift detection

Alibi Detect is an open source Python library focused on outlier, adversarial and drift detection. The package aims to cover both online and offline d

Seldon 1.6k Dec 31, 2022
Pytorch implementation of U-Net, R2U-Net, Attention U-Net, and Attention R2U-Net.

pytorch Implementation of U-Net, R2U-Net, Attention U-Net, Attention R2U-Net U-Net: Convolutional Networks for Biomedical Image Segmentation https://a

leejunhyun 2k Jan 02, 2023
The code for our paper submitted to RAL/IROS 2022: OverlapTransformer: An Efficient and Rotation-Invariant Transformer Network for LiDAR-Based Place Recognition.

OverlapTransformer The code for our paper submitted to RAL/IROS 2022: OverlapTransformer: An Efficient and Rotation-Invariant Transformer Network for

HAOMO.AI 136 Jan 03, 2023
A library for building and serving multi-node distributed faiss indices.

About Distributed faiss index service. A lightweight library that lets you work with FAISS indexes which don't fit into a single server memory. It fol

Meta Research 170 Dec 30, 2022
The Unreasonable Effectiveness of Random Pruning: Return of the Most Naive Baseline for Sparse Training

[ICLR 2022] The Unreasonable Effectiveness of Random Pruning: Return of the Most Naive Baseline for Sparse Training The Unreasonable Effectiveness of

VITA 44 Dec 23, 2022
MOOSE (Multi-organ objective segmentation) a data-centric AI solution that generates multilabel organ segmentations to facilitate systemic TB whole-person research

MOOSE (Multi-organ objective segmentation) a data-centric AI solution that generates multilabel organ segmentations to facilitate systemic TB whole-person research.The pipeline is based on nn-UNet an

QIMP team 30 Jan 01, 2023
PyTorch implementation of Asymmetric Siamese (https://arxiv.org/abs/2204.00613)

Asym-Siam: On the Importance of Asymmetry for Siamese Representation Learning This is a PyTorch implementation of the Asym-Siam paper, CVPR 2022: @inp

Meta Research 89 Dec 18, 2022