Repo for my Tensorflow/Keras CV experiments. Mostly revolving around the Danbooru20xx dataset

Overview

SW-CV-ModelZoo

Repo for my Tensorflow/Keras CV experiments. Mostly revolving around the Danbooru20xx dataset


Framework: TF/Keras 2.7

Training SQLite DB built using fire-egg's tools: https://github.com/fire-eggs/Danbooru2019

Currently training on Danbooru2021, 512px SFW subset (sans the rating:q images that had been included in the 2022-01-21 release of the dataset)

Reference:

Anonymous, The Danbooru Community, & Gwern Branwen; “Danbooru2021: A Large-Scale Crowdsourced and Tagged Anime Illustration Dataset”, 2022-01-21. Web. Accessed 2022-01-28 https://www.gwern.net/Danbooru2021


Journal

06/02/2022: great news crew! TRC allowed me to use a bunch of TPUs!

To make better use of this amount of compute I had to overhaul a number of components, so a bunch of things are likely to have fallen to bitrot in the process. I can only guarantee NFNet can work pretty much as before with the right arguments.
NFResNet changes should have left it retrocompatible with the previous version.
ResNet has been streamlined to be mostly in line with the Bag-of-Tricks paper (arXiv:1812.01187) with the exception of the stem. It is not compatible with the previous version of the code.

The training labels have been included in the 2021_0000_0899 folder for convenience.
The list of files used for training is going to be uploaded as a GitHub Release.

Now for some numbers:
compared to my previous best run, the one that resulted in NFNetL1V1-100-0.57141:

  • I'm using 1.86x the amount of images: 2.8M vs 1.5M
  • I'm training bigger models: 61M vs 45M params
  • ... in less time: 232 vs 700 hours of processor time
  • don't get me started on actual wall clock time
  • with a few amenities thrown in: ECA for channel attention, SiLU activation

And it's all thanks to the folks at TRC, so shout out to them!

I currently have a few runs in progress across a couple of dimensions:

  • effect of model size with NFNet L0/L1/L2, with SiLU and ECA for all three of them
  • effect of activation function with NFNet L0, with SiLU/HSwish/ReLU, no ECA

Once the experiments are over, the plan is to select the network definitions that lay on the Pareto curve between throughput and F1 score and release the trained weights.

One last thing.
I'd like to call your attention to the tools/cleanlab_stuff.py script.
It reads two files: one with the binarized labels from the database, the other with the predicted probabilities.
It then uses the cleanlab package to estimate whether if an image in a set could be missing a given label. At the end it stores its conclusions in a json file.
This file could, potentially, be used in some tool to assist human intervention to add the missing tags.

You might also like...
Human head pose estimation using Keras over TensorFlow.
Human head pose estimation using Keras over TensorFlow.

RealHePoNet: a robust single-stage ConvNet for head pose estimation in the wild.

Graph Neural Networks with Keras and Tensorflow 2.

Welcome to Spektral Spektral is a Python library for graph deep learning, based on the Keras API and TensorFlow 2. The main goal of this project is to

QKeras: a quantization deep learning library for Tensorflow Keras

QKeras github.com/google/qkeras QKeras 0.8 highlights: Automatic quantization using QKeras; Stochastic behavior (including stochastic rouding) is disa

Hyperparameter Optimization for TensorFlow, Keras and PyTorch
Hyperparameter Optimization for TensorFlow, Keras and PyTorch

Hyperparameter Optimization for Keras Talos • Key Features • Examples • Install • Support • Docs • Issues • License • Download Talos radically changes

MMdnn is a set of tools to help users inter-operate among different deep learning frameworks. E.g. model conversion and visualization. Convert models between Caffe, Keras, MXNet, Tensorflow, CNTK, PyTorch Onnx and CoreML.
MMdnn is a set of tools to help users inter-operate among different deep learning frameworks. E.g. model conversion and visualization. Convert models between Caffe, Keras, MXNet, Tensorflow, CNTK, PyTorch Onnx and CoreML.

MMdnn MMdnn is a comprehensive and cross-framework tool to convert, visualize and diagnose deep learning (DL) models. The "MM" stands for model manage

Deep GPs built on top of TensorFlow/Keras and GPflow

GPflux Documentation | Tutorials | API reference | Slack What does GPflux do? GPflux is a toolbox dedicated to Deep Gaussian processes (DGP), the hier

tf2onnx - Convert TensorFlow, Keras and Tflite models to ONNX.

tf2onnx converts TensorFlow (tf-1.x or tf-2.x), tf.keras and tflite models to ONNX via command line or python api.

Build tensorflow keras model pipelines in a single line of code. Created by Ram Seshadri. Collaborators welcome. Permission granted upon request.
Build tensorflow keras model pipelines in a single line of code. Created by Ram Seshadri. Collaborators welcome. Permission granted upon request.

deep_autoviml Build keras pipelines and models in a single line of code! Table of Contents Motivation How it works Technology Install Usage API Image

Advanced Deep Learning with TensorFlow 2 and Keras (Updated for 2nd Edition)
Advanced Deep Learning with TensorFlow 2 and Keras (Updated for 2nd Edition)

Advanced Deep Learning with TensorFlow 2 and Keras (Updated for 2nd Edition)

Releases(models_db2021_5500_2022_10_21)
  • models_db2021_5500_2022_10_21(Oct 21, 2022)

    ConvNext B, ViT B16
    Trained on Danbooru2021 512px SFW subset, modulos 0000-0899
    top 5500 tags (2021_0000_0899_5500/selected_tags.csv)
    alpha to white
    padding to make the image square is white
    channel order is BGR, input is 0...255, scaled to -1...1 within the model

    | run_name | definition_name | params_human | image_size | thres | F1 | |:---------------------------------|:------------------|:---------------|-------------:|--------:|-------:| | ConvNextBV1_09_25_2022_05h13m55s | B | 93.2M | 448 | 0.3673 | 0.6941 | | ViTB16_09_25_2022_04h53m38s | B16 | 90.5M | 448 | 0.3663 | 0.6918 |

    Source code(tar.gz)
    Source code(zip)
    ConvNextBV1_09_25_2022_05h13m55s.7z(322.58 MB)
    ViTB16_09_25_2022_04h53m38s.7z(312.96 MB)
  • convnexts_db2021_2022_03_22(Mar 22, 2022)

    ConvNext, T/S/B
    Trained on Danbooru2021 512px SFW subset, modulos 0000-0899
    alpha to white
    padding to make the image square is white
    channel order is BGR, input is 0...255, scaled to -1...1 within the model

    | run_name | definition_name | params_human | image_size | thres | F1 | |:---------------------------------|:------------------|:---------------|-------------:|--------:|-------:| | ConvNextBV1_03_10_2022_21h41m23s | B | 90.01M | 448 | 0.3372 | 0.6892 | | ConvNextSV1_03_11_2022_17h49m56s | S | 51.28M | 384 | 0.3301 | 0.6798 | | ConvNextTV1_03_05_2022_15h56m42s | T | 29.65M | 320 | 0.3259 | 0.6595 |

    Source code(tar.gz)
    Source code(zip)
    ConvNextBV1_03_10_2022_21h41m23s.7z(311.29 MB)
    ConvNextSV1_03_11_2022_17h49m56s.7z(177.36 MB)
    ConvNextTV1_03_05_2022_15h56m42s.7z(102.96 MB)
  • nfnets_db2021_2022_03_04(Mar 4, 2022)

    NFNet, L0/L1/L2 (based on timm Lx model definitions) Trained on Danbooru2021 512px SFW subset, modulos 0000-0899 alpha to white padding to make the image square is white channel order is BGR, input is 0...255, scaled to -1...1 within the model

    | run_name | definition_name | params_human | image_size | thres | F1 | |:---------------------------------|:------------------|:---------------|-------------:|--------:|-------:| | NFNetL2V1_02_20_2022_10h27m08s | L2 | 60.96M | 448 | 0.3231 | 0.6785 | | NFNetL1V1_02_17_2022_20h18m38s | L1 | 45.65M | 384 | 0.3259 | 0.6691 | | NFNetL0V1_02_10_2022_17h50m14s | L0 | 27.32M | 320 | 0.3190 | 0.6509 |

    Source code(tar.gz)
    Source code(zip)
    NFNetL0V1_02_10_2022_17h50m14s.7z(94.98 MB)
    NFNetL1V1_02_17_2022_20h18m38s.7z(157.97 MB)
    NFNetL2V1_02_20_2022_10h27m08s.7z(210.49 MB)
  • nfnet_tpu_training(Feb 6, 2022)

  • NFNetL1V1-100-0.57141(Dec 31, 2021)

    • NFNet, L1 (based on timm Lx model definitions), 100 epochs, F1 @ 0.4 at the end of the 100th epoch was 0.57141
    • Trained on Danbooru2020 512px SFW subset, modulos 0000-0599
    • 320px per side
    • alpha to white
    • padding to make the image square is white
    • channel order is BGR, scaled to 0-1
    • mixup alpha = 0.2 during epochs 76-100
    • analyze_metrics on Danbooru2020 original set, modulos 0984-0999: {'thres': 0.3485, 'F1': 0.6133, 'F2': 0.6133, 'MCC': 0.6094, 'A': 0.9923, 'R': 0.6133, 'P': 0.6133}
    • analyze_metrics on image IDs 4970000-5000000: {'thres': 0.3148, 'F1': 0.5942, 'F2': 0.5941, 'MCC': 0.5892, 'A': 0.9901, 'R': 0.5940, 'P': 0.5943}
    Source code(tar.gz)
    Source code(zip)
    NFNetL1V1-100-0.57141.7z(158.09 MB)
Image Segmentation Animation using Quadtree concepts.

QuadTree Image Segmentation Animation using QuadTree concepts. Usage usage: quad.py [-h] [-fps FPS] [-i ITERATIONS] [-ws WRITESTART] [-b] [-img] [-s S

Alex Eidt 29 Dec 25, 2022
Regulatory Instruments for Fair Personalized Pricing.

Fair pricing Source code for WWW 2022 paper Regulatory Instruments for Fair Personalized Pricing. Installation Requirements Linux with Python = 3.6 p

Renzhe Xu 6 Oct 26, 2022
BasicVSR++: Improving Video Super-Resolution with Enhanced Propagation and Alignment

BasicVSR++: Improving Video Super-Resolution with Enhanced Propagation and Alignment

Holy Wu 35 Jan 01, 2023
We envision models that are pre-trained on a vast range of domain-relevant tasks to become key for molecule property prediction

We envision models that are pre-trained on a vast range of domain-relevant tasks to become key for molecule property prediction. This repository aims to give easy access to state-of-the-art pre-train

GMUM 90 Jan 08, 2023
A tutorial on training a DarkNet YOLOv4 model for the CrowdHuman dataset

YOLOv4 CrowdHuman Tutorial This is a tutorial demonstrating how to train a YOLOv4 people detector using Darknet and the CrowdHuman dataset. Table of c

JK Jung 118 Nov 10, 2022
Source code for PairNorm (ICLR 2020)

PairNorm Official pytorch source code for PairNorm paper (ICLR 2020) This code requires pytorch_geometric=1.3.2 usage For SGC, we use original PairNo

62 Dec 08, 2022
Official implementation of "Membership Inference Attacks Against Self-supervised Speech Models"

Introduction Official implementation of "Membership Inference Attacks Against Self-supervised Speech Models". In this work, we demonstrate that existi

Wei-Cheng Tseng 7 Nov 01, 2022
This git repo contains the implementation of my ML project on Heart Disease Prediction

Introduction This git repo contains the implementation of my ML project on Heart Disease Prediction. This is a real-world machine learning model/proje

Aryan Dutta 1 Feb 02, 2022
LoveDA: A Remote Sensing Land-Cover Dataset for Domain Adaptive Semantic Segmentation (NeurIPS2021 Benchmark and Dataset Track)

LoveDA: A Remote Sensing Land-Cover Dataset for Domain Adaptive Semantic Segmentation by Junjue Wang, Zhuo Zheng, Ailong Ma, Xiaoyan Lu, and Yanfei Zh

Kingdrone 174 Dec 22, 2022
CHERRY is a python library for predicting the interactions between viral and prokaryotic genomes

CHERRY is a python library for predicting the interactions between viral and prokaryotic genomes. CHERRY is based on a deep learning model, which consists of a graph convolutional encoder and a link

Kenneth Shang 12 Dec 15, 2022
Contrastive Learning with Non-Semantic Negatives

Contrastive Learning with Non-Semantic Negatives This repository is the official implementation of Robust Contrastive Learning Using Negative Samples

39 Jul 31, 2022
Project NII pytorch scripts

project-NII-pytorch-scripts By Xin Wang, National Institute of Informatics, since 2021 I am a new pytorch user. If you have any suggestions or questio

Yamagishi and Echizen Laboratories, National Institute of Informatics 184 Dec 23, 2022
Official implementation of the method ContIG, for self-supervised learning from medical imaging with genomics

ContIG: Self-supervised Multimodal Contrastive Learning for Medical Imaging with Genetics This is the code implementation of the paper "ContIG: Self-s

Digital Health & Machine Learning 22 Dec 13, 2022
Official implementation of CVPR2020 paper "Deep Generative Model for Robust Imbalance Classification"

Deep Generative Model for Robust Imbalance Classification Deep Generative Model for Robust Imbalance Classification Xinyue Wang, Yilin Lyu, Liping Jin

9 Nov 01, 2022
The official implementation of "Rethink Dilated Convolution for Real-time Semantic Segmentation"

RegSeg The official implementation of "Rethink Dilated Convolution for Real-time Semantic Segmentation" Paper: arxiv D block Decoder Setup Install the

Roland 61 Dec 27, 2022
The second project in Python course on FCC

Assignment Write a function named add_time that takes in two required parameters and one optional parameter: a start time in the 12-hour clock format

Denise T 1 Dec 13, 2021
[ICCV' 21] "Unsupervised Point Cloud Pre-training via Occlusion Completion"

OcCo: Unsupervised Point Cloud Pre-training via Occlusion Completion This repository is the official implementation of paper: "Unsupervised Point Clou

Hanchen 204 Dec 24, 2022
Boundary IoU API (Beta version)

Boundary IoU API (Beta version) Bowen Cheng, Ross Girshick, Piotr Dollár, Alexander C. Berg, Alexander Kirillov [arXiv] [Project] [BibTeX] This API is

Bowen Cheng 177 Dec 29, 2022
Baseline model for "GraspNet-1Billion: A Large-Scale Benchmark for General Object Grasping" (CVPR 2020)

GraspNet Baseline Baseline model for "GraspNet-1Billion: A Large-Scale Benchmark for General Object Grasping" (CVPR 2020). [paper] [dataset] [API] [do

GraspNet 209 Dec 29, 2022
PrimitiveNet: Primitive Instance Segmentation with Local Primitive Embedding under Adversarial Metric (ICCV 2021)

PrimitiveNet Source code for the paper: Jingwei Huang, Yanfeng Zhang, Mingwei Sun. [PrimitiveNet: Primitive Instance Segmentation with Local Primitive

Jingwei Huang 47 Dec 06, 2022