Image classification for projects and researches

Overview

Python 3.7 Python 3.8 MIT License Coverage

KERAS CLASSIFY

Image classification for projects and researches

About The Project

Image classification is a commonly used problem in the experimental part of scientific papers and also frequently appears as part of the projects. With the desire to reduce time and effort, Keras Classify was created.

Getting Started

Installation

  1. Clone the repo: https://github.com/nguyentruonglau/keras-classify.git

  2. Install packages

    > python -m venv 
         
          
    > activate.bat (in scripts folder)
    > pip install -r requirements.txt
    
         

Todo List:

  • Cosine learning rate scheduler
  • Gradient-based Localization
  • Sota models
  • Synthetic data
  • Smart Resize
  • Support Python 3.X and Tf 2.X
  • Use imagaug for augmentation data
  • Use prefetching and multiprocessing to training.
  • Analysis Of Input Shape
  • Compiled using XLA, auto-clustering on GPU
  • Receiver operating characteristic

Quick Start

Analysis Of Input Shape

If your data has random input_shape, you don't know which input_shape to choose, the analysis program is the right choice for you. The algorithm is applied to analyze: Kernel Density Estimation.

Convert Data

From tensorflow 2.3.x already support auto fit_generator, however moving the data to npy file will make it easier to manage. The algorithm is applied to shuffle data: Random Permutation. Read more here.

Run: python convert/convert_npy.py

Training Model.

Design your model at model/models.py, we have made EfficientNetB0 the default. Adjust the appropriate hyperparameters and run: python train.py

Evaluate Model.

  • Statistics number of images per class after suffle on test data.

  • Provide model evalution indicators such as: Accuracy, Precesion, Recall, F1-Score and AUC (Area Under the Curve).

  • Plot training history of Accuracy, Loss, Receiver Operating Characteristic curve and Confusion Matrix.

Explainable AI.

Grad-CAM: Visual Explanations from Deep Networks via Gradient-based Localization. "We propose a technique for producing 'visual explanations' for decisions from a large class of CNN-based models, making them more transparent" Ramprasaath R. Selvaraju ... Read more here.

Example Code

Use for projects

from keras.preprocessing.image import load_img, img_to_array
from keras.preprocessing.image import smart_resize
from tensorflow.keras.models import load_model
import tensorflow as tf
import numpy as np

#load pretrained model
model_path = 'data/output/model/val_accuracy_max.h5'
model = load_model(model_path)

#load data
img_path = 'images/images.jpg'
img = load_img(img_path)
img = img_to_array(img)
img = smart_resize(img, (72,72)) #resize to HxW
img = np.expand_dims(img, axis=0)

#prediction
y_pred = model.predict(img)
y_pred = np.argmax(y_pred, axis=1)

#see convert/output/label_decode.json
print(y_pred)

Smart resize (tf < 2.4.1)

from tensorflow.keras.preprocessing.image import img_to_array
from tensorflow.keras.preprocessing.image load_img
from tensorflow.python.ops import array_ops
from tensorflow.python.ops import image_ops
import numpy as np

def smart_resize(img, new_size, interpolation='bilinear'):
    """Resize images to a target size without aspect ratio distortion.

    Arguments:
      img (3D array): image data
      new_size (tuple): HxW

    Returns:
      [3D array]: image after resize
    """
    # Get infor of the image
    height, width, _ = img.shape
    target_height, target_width = new_size

    crop_height = (width * target_height) // target_width
    crop_width = (height * target_width) // target_height

    # Set back to input height / width if crop_height / crop_width is not smaller.
    crop_height = np.min([height, crop_height])
    crop_width = np.min([width, crop_width])

    crop_box_hstart = (height - crop_height) // 2
    crop_box_wstart = (width - crop_width) // 2

    # Infor to resize image
    crop_box_start = array_ops.stack([crop_box_hstart, crop_box_wstart, 0])
    crop_box_size = array_ops.stack([crop_height, crop_width, -1])

    img = array_ops.slice(img, crop_box_start, crop_box_size)
    img = image_ops.resize_images_v2(
        images=img,
        size=new_size,
        method=interpolation)
    return img.numpy()

Contributor

  1. BS Nguyen Truong Lau ([email protected])
  2. PhD Thai Trung Hieu ([email protected])

License

Distributed under the MIT License. See LICENSE for more information.

You might also like...
An end-to-end PyTorch framework for image and video classification
An end-to-end PyTorch framework for image and video classification

What's New: March 2021: Added RegNetZ models November 2020: Vision Transformers now available, with training recipes! 2020-11-20: Classy Vision v0.5 R

Scripts for training an AI to play the endless runner Subway Surfers using a supervised machine learning approach by imitation and a convolutional neural network (CNN) for image classification
Scripts for training an AI to play the endless runner Subway Surfers using a supervised machine learning approach by imitation and a convolutional neural network (CNN) for image classification

About subwAI subwAI - a project for training an AI to play the endless runner Subway Surfers using a supervised machine learning approach by imitation

PyTorch implementation of our method for adversarial attacks and defenses in hyperspectral image classification.
PyTorch implementation of our method for adversarial attacks and defenses in hyperspectral image classification.

Self-Attention Context Network for Hyperspectral Image Classification PyTorch implementation of our method for adversarial attacks and defenses in hyp

Code image classification of MNIST dataset using different architectures: simple linear NN, autoencoder, and highway network

Deep Learning for image classification pip install -r http://webia.lip6.fr/~baskiotisn/requirements-amal.txt Train an autoencoder python3 train_auto

A PyTorch Image-Classification With AlexNet And ResNet50.

PyTorch 图像分类 依赖库的下载与安装 在终端中执行 pip install -r -requirements.txt 完成项目依赖库的安装 使用方式 数据集的准备 STL10 数据集 下载:STL-10 Dataset 存储位置:将下载后的数据集中 train_X.bin,train_y.b

CNN Based Meta-Learning for Noisy Image Classification and Template Matching

CNN Based Meta-Learning for Noisy Image Classification and Template Matching Introduction This master thesis used a few-shot meta learning approach to

Code of Classification Saliency-Based Rule for Visible and Infrared Image Fusion

CSF Code of Classification Saliency-Based Rule for Visible and Infrared Image Fusion Tips: For testing: CUDA_VISIBLE_DEVICES=0 python main.py For trai

A python-image-classification web application project, written in Python and served through the Flask Microframework
A python-image-classification web application project, written in Python and served through the Flask Microframework

A python-image-classification web application project, written in Python and served through the Flask Microframework. This Project implements the VGG16 covolutional neural network, through Keras and Tensorflow wrappers, to make predictions on uploaded images.

All the essential resources and template code needed to understand and practice data structures and algorithms in python with few small projects to demonstrate their practical application.

Data Structures and Algorithms Python INDEX 1. Resources - Books Data Structures - Reema Thareja competitiveCoding Big-O Cheat Sheet DAA Syllabus Inte

Releases(v1.0.0)
Owner
Nguyễn Trường Lâu
AI Researcher at FPT Software
Nguyễn Trường Lâu
Deep Learning to Improve Breast Cancer Detection on Screening Mammography

Shield: This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License. Deep Learning to Improve Breast

Li Shen 305 Jan 03, 2023
ACV is a python library that provides explanations for any machine learning model or data.

ACV is a python library that provides explanations for any machine learning model or data. It gives local rule-based explanations for any model or data and different Shapley Values for tree-based mod

Salim Amoukou 85 Dec 27, 2022
Quickly and easily create / train a custom DeepDream model

Dream-Creator This project aims to simplify the process of creating a custom DeepDream model by using pretrained GoogleNet models and custom image dat

55 Dec 27, 2022
PRTR: Pose Recognition with Cascade Transformers

PRTR: Pose Recognition with Cascade Transformers Introduction This repository is the official implementation for Pose Recognition with Cascade Transfo

mlpc-ucsd 133 Dec 30, 2022
Dynamic Head: Unifying Object Detection Heads with Attentions

Dynamic Head: Unifying Object Detection Heads with Attentions dyhead_video.mp4 This is the official implementation of CVPR 2021 paper "Dynamic Head: U

Microsoft 550 Dec 21, 2022
Bio-Computing Platform Featuring Large-Scale Representation Learning and Multi-Task Deep Learning “螺旋桨”生物计算工具集

English | 简体中文 Latest News 2021.10.25 Paper "Docking-based Virtual Screening with Multi-Task Learning" is accepted by BIBM 2021. 2021.07.29 PaddleHeli

633 Jan 04, 2023
CLOOB: Modern Hopfield Networks with InfoLOOB Outperform CLIP

CLOOB: Modern Hopfield Networks with InfoLOOB Outperform CLIP Andreas Fürst* 1, Elisabeth Rumetshofer* 1, Viet Tran1, Hubert Ramsauer1, Fei Tang3, Joh

Institute for Machine Learning, Johannes Kepler University Linz 133 Jan 04, 2023
The official code for PRIMER: Pyramid-based Masked Sentence Pre-training for Multi-document Summarization

PRIMER The official code for PRIMER: Pyramid-based Masked Sentence Pre-training for Multi-document Summarization. PRIMER is a pre-trained model for mu

AI2 114 Jan 06, 2023
End-to-end beat and downbeat tracking in the time domain.

WaveBeat End-to-end beat and downbeat tracking in the time domain. | Paper | Code | Video | Slides | Setup First clone the repo. git clone https://git

Christian J. Steinmetz 60 Dec 24, 2022
A little Python application to auto tag your photos with the power of machine learning.

Tag Machine A little Python application to auto tag your photos with the power of machine learning. Report a bug or request a feature Table of Content

Florian Torres 14 Dec 21, 2022
The MATH Dataset

Measuring Mathematical Problem Solving With the MATH Dataset This is the repository for Measuring Mathematical Problem Solving With the MATH Dataset b

Dan Hendrycks 267 Dec 26, 2022
A mini-course offered to Undergrad chemistry students

The best way to use this material is by forking it by click the Fork button at the top, right corner. Then you will get your own copy to play with! Th

Raghu 19 Dec 19, 2022
What can linearized neural networks actually say about generalization?

What can linearized neural networks actually say about generalization? This is the source code to reproduce the experiments of the NeurIPS 2021 paper

gortizji 11 Dec 09, 2022
Safe Policy Optimization with Local Features

Safe Policy Optimization with Local Feature (SPO-LF) This is the source-code for implementing the algorithms in the paper "Safe Policy Optimization wi

Akifumi Wachi 6 Jun 05, 2022
Offcial implementation of "A Hybrid Video Anomaly Detection Framework via Memory-Augmented Flow Reconstruction and Flow-Guided Frame Prediction, ICCV-2021".

HF2-VAD Offcial implementation of "A Hybrid Video Anomaly Detection Framework via Memory-Augmented Flow Reconstruction and Flow-Guided Frame Predictio

76 Dec 21, 2022
[BMVC2021] The official implementation of "DomainMix: Learning Generalizable Person Re-Identification Without Human Annotations"

DomainMix [BMVC2021] The official implementation of "DomainMix: Learning Generalizable Person Re-Identification Without Human Annotations" [paper] [de

Wenhao Wang 17 Dec 20, 2022
Split your patch similarly to `git add -p` but supporting multiple buckets

split-patch.py This is git add -p on steroids for patches. Given a my.patch you can run ./split-patch.py my.patch You can choose in which bucket to p

102 Oct 06, 2022
An Efficient Implementation of Analytic Mesh Algorithm for 3D Iso-surface Extraction from Neural Networks

AnalyticMesh Analytic Marching is an exact meshing solution from neural networks. Compared to standard methods, it completely avoids geometric and top

Karbo 45 Dec 21, 2022
Discovering Dynamic Salient Regions with Spatio-Temporal Graph Neural Networks

Discovering Dynamic Salient Regions with Spatio-Temporal Graph Neural Networks This is the official code for DyReg model inroduced in Discovering Dyna

Bitdefender Machine Learning 11 Nov 08, 2022
Convert Mission Planner (ArduCopter) Waypoint Missions to Litchi CSV Format to execute on DJI Drones

Mission Planner to Litchi Convert Mission Planner (ArduCopter) Waypoint Surveys to Litchi CSV Format to execute on DJI Drones Litchi doesn't support S

Yaros 24 Dec 09, 2022