12 KiB
comments | description | keywords |
---|---|---|
true | An in-depth guide demonstrating the implementation of K-Fold Cross Validation with the Ultralytics ecosystem for object detection datasets, leveraging Python, YOLO, and sklearn. | K-Fold cross validation, Ultralytics, YOLO detection format, Python, sklearn, object detection |
K-Fold Cross Validation in the Ultralytics Ecosystem
Introduction
This comprehensive guide illustrates the implementation of K-Fold Cross Validation for object detection datasets within the Ultralytics ecosystem. We'll leverage the YOLO detection format and key Python libraries such as sklearn, pandas, and PyYaml to guide you through the necessary setup, the process of generating feature vectors, and the execution of a K-Fold dataset split.
Whether your project involves the Fruit Detection dataset or a custom data source, this tutorial aims to help you comprehend and apply K-Fold Cross Validation to bolster the reliability and robustness of your machine learning models. While we're applying k=5
folds for this tutorial, keep in mind that the optimal number of folds can vary depending on your dataset and the specifics of your project.
Without further ado, let's dive in!
Setup
-
Your annotations should be in the YOLO detection format.
-
This guide assumes that annotation files are locally available.
-
For our demonstration, we use the Fruit Detection dataset.
- This dataset contains a total of 8479 images.
- It includes 6 class labels, each with its total instance counts listed below.
Class Label Instance Count Apple 7049 Grapes 7202 Pineapple 1613 Orange 15549 Banana 3536 Watermelon 1976
-
-
Necessary Python packages include:
ultralytics
sklearn
pandas
pyyaml
-
This tutorial operates with
k=5
folds. However, you should determine the best number of folds for your specific dataset.
-
Initiate a new Python virtual environment (
venv
) for your project and activate it. Usepip
(or your preferred package manager) to install:- The Ultralytics library:
pip install -U ultralytics
. Alternatively, you can clone the official repo. - Scikit-learn, pandas, and PyYAML:
pip install -U scikit-learn pandas pyyaml
.
- The Ultralytics library:
-
Verify that your annotations are in the YOLO detection format.
- For this tutorial, all annotation files are found in the
Fruit-Detection/labels
directory.
- For this tutorial, all annotation files are found in the
Generating Feature Vectors for Object Detection Dataset
-
Start by creating a new Python file and import the required libraries.
import datetime import shutil from pathlib import Path from collections import Counter import yaml import numpy as np import pandas as pd from ultralytics import YOLO from sklearn.model_selection import KFold
-
Proceed to retrieve all label files for your dataset.
dataset_path = Path('./Fruit-detection') # replace with 'path/to/dataset' for your custom data labels = sorted(dataset_path.rglob("*labels/*.txt")) # all data in 'labels'
-
Now, read the contents of the dataset YAML file and extract the indices of the class labels.
with open(yaml_file, 'r', encoding="utf8") as y: classes = yaml.safe_load(y)['names'] cls_idx = sorted(classes.keys())
-
Initialize an empty
pandas
DataFrame.indx = [l.stem for l in labels] # uses base filename as ID (no extension) labels_df = pd.DataFrame([], columns=cls_idx, index=indx)
-
Count the instances of each class-label present in the annotation files.
for label in labels: lbl_counter = Counter() with open(label,'r') as lf: lines = lf.readlines() for l in lines: # classes for YOLO label uses integer at first position of each line lbl_counter[int(l.split(' ')[0])] += 1 labels_df.loc[label.stem] = lbl_counter labels_df = labels_df.fillna(0.0) # replace `nan` values with `0.0`
-
The following is a sample view of the populated DataFrame:
0 1 2 3 4 5 '0000a16e4b057580_jpg.rf.00ab48988370f64f5ca8ea4...' 0.0 0.0 0.0 0.0 0.0 7.0 '0000a16e4b057580_jpg.rf.7e6dce029fb67f01eb19aa7...' 0.0 0.0 0.0 0.0 0.0 7.0 '0000a16e4b057580_jpg.rf.bc4d31cdcbe229dd022957a...' 0.0 0.0 0.0 0.0 0.0 7.0 '00020ebf74c4881c_jpg.rf.508192a0a97aa6c4a3b6882...' 0.0 0.0 0.0 1.0 0.0 0.0 '00020ebf74c4881c_jpg.rf.5af192a2254c8ecc4188a25...' 0.0 0.0 0.0 1.0 0.0 0.0 ... ... ... ... ... ... ... 'ff4cd45896de38be_jpg.rf.c4b5e967ca10c7ced3b9e97...' 0.0 0.0 0.0 0.0 0.0 2.0 'ff4cd45896de38be_jpg.rf.ea4c1d37d2884b3e3cbce08...' 0.0 0.0 0.0 0.0 0.0 2.0 'ff5fd9c3c624b7dc_jpg.rf.bb519feaa36fc4bf630a033...' 1.0 0.0 0.0 0.0 0.0 0.0 'ff5fd9c3c624b7dc_jpg.rf.f0751c9c3aa4519ea3c9d6a...' 1.0 0.0 0.0 0.0 0.0 0.0 'fffe28b31f2a70d4_jpg.rf.7ea16bd637ba0711c53b540...' 0.0 6.0 0.0 0.0 0.0 0.0
The rows index the label files, each corresponding to an image in your dataset, and the columns correspond to your class-label indices. Each row represents a pseudo feature-vector, with the count of each class-label present in your dataset. This data structure enables the application of K-Fold Cross Validation to an object detection dataset.
K-Fold Dataset Split
-
Now we will use the
KFold
class fromsklearn.model_selection
to generatek
splits of the dataset.- Important:
- Setting
shuffle=True
ensures a randomized distribution of classes in your splits. - By setting
random_state=M
whereM
is a chosen integer, you can obtain repeatable results.
- Setting
ksplit = 5 kf = KFold(n_splits=ksplit, shuffle=True, random_state=20) # setting random_state for repeatable results kfolds = list(kf.split(labels_df))
- Important:
-
The dataset has now been split into
k
folds, each having a list oftrain
andval
indices. We will construct a DataFrame to display these results more clearly.folds = [f'split_{n}' for n in range(1, ksplit + 1)] folds_df = pd.DataFrame(index=indx, columns=folds) for idx, (train, val) in enumerate(kfolds, start=1): folds_df[f'split_{idx}'].loc[labels_df.iloc[train].index] = 'train' folds_df[f'split_{idx}'].loc[labels_df.iloc[val].index] = 'val'
-
Now we will calculate the distribution of class labels for each fold as a ratio of the classes present in
val
to those present intrain
.fold_lbl_distrb = pd.DataFrame(index=folds, columns=cls_idx) for n, (train_indices, val_indices) in enumerate(kfolds, start=1): train_totals = labels_df.iloc[train_indices].sum() val_totals = labels_df.iloc[val_indices].sum() # To avoid division by zero, we add a small value (1E-7) to the denominator ratio = val_totals / (train_totals + 1E-7) fold_lbl_distrb.loc[f'split_{n}'] = ratio
The ideal scenario is for all class ratios to be reasonably similar for each split and across classes. This, however, will be subject to the specifics of your dataset.
-
Next, we create the directories and dataset YAML files for each split.
save_path = Path(dataset_path / f'{datetime.date.today().isoformat()}_{ksplit}-Fold_Cross-val') save_path.mkdir(parents=True, exist_ok=True) images = sorted((dataset_path / 'images').rglob("*.jpg")) # change file extension as needed ds_yamls = [] for split in folds_df.columns: # Create directories split_dir = save_path / split split_dir.mkdir(parents=True, exist_ok=True) (split_dir / 'train' / 'images').mkdir(parents=True, exist_ok=True) (split_dir / 'train' / 'labels').mkdir(parents=True, exist_ok=True) (split_dir / 'val' / 'images').mkdir(parents=True, exist_ok=True) (split_dir / 'val' / 'labels').mkdir(parents=True, exist_ok=True) # Create dataset YAML files dataset_yaml = split_dir / f'{split}_dataset.yaml' ds_yamls.append(dataset_yaml) with open(dataset_yaml, 'w') as ds_y: yaml.safe_dump({ 'path': save_path.as_posix(), 'train': 'train', 'val': 'val', 'names': classes }, ds_y)
-
Lastly, copy images and labels into the respective directory ('train' or 'val') for each split.
- NOTE: The time required for this portion of the code will vary based on the size of your dataset and your system hardware.
for image, label in zip(images, labels): for split, k_split in folds_df.loc[image.stem].items(): # Destination directory img_to_path = save_path / split / k_split / 'images' lbl_to_path = save_path / split / k_split / 'labels' # Copy image and label files to new directory # Might throw a SamefileError if file already exists shutil.copy(image, img_to_path / image.name) shutil.copy(label, lbl_to_path / label.name)
Save Records (Optional)
Optionally, you can save the records of the K-Fold split and label distribution DataFrames as CSV files for future reference.
folds_df.to_csv(save_path / "kfold_datasplit.csv")
fold_lbl_distrb.to_csv(save_path / "kfold_label_distribution.csv")
Train YOLO using K-Fold Data Splits
-
First, load the YOLO model.
weights_path = 'path/to/weights.pt' model = YOLO(weights_path, task='detect')
-
Next, iterate over the dataset YAML files to run training. The results will be saved to a directory specified by the
project
andname
arguments. By default, this directory is 'exp/runs#' where # is an integer index.results = {} for k in range(ksplit): dataset_yaml = ds_yamls[k] model.train(data=dataset_yaml, *args, **kwargs) # Include any training arguments results[k] = model.metrics # save output metrics for further analysis
Conclusion
In this guide, we have explored the process of using K-Fold cross-validation for training the YOLO object detection model. We learned how to split our dataset into K partitions, ensuring a balanced class distribution across the different folds.
We also explored the procedure for creating report DataFrames to visualize the data splits and label distributions across these splits, providing us a clear insight into the structure of our training and validation sets.
Optionally, we saved our records for future reference, which could be particularly useful in large-scale projects or when troubleshooting model performance.
Finally, we implemented the actual model training using each split in a loop, saving our training results for further analysis and comparison.
This technique of K-Fold cross-validation is a robust way of making the most out of your available data, and it helps to ensure that your model performance is reliable and consistent across different data subsets. This results in a more generalizable and reliable model that is less likely to overfit to specific data patterns.
Remember that although we used YOLO in this guide, these steps are mostly transferable to other machine learning models. Understanding these steps allows you to apply cross-validation effectively in your own machine learning projects. Happy coding!