SOTAVerified

Data Augmentation

Data augmentation involves techniques used for increasing the amount of data, based on different modifications, to expand the amount of examples in the original dataset. Data augmentation not only helps to grow the dataset but it also increases the diversity of the dataset. When training machine learning models, data augmentation acts as a regularizer and helps to avoid overfitting.

Data augmentation techniques have been found useful in domains like NLP and computer vision. In computer vision, transformations like cropping, flipping, and rotation are used. In NLP, data augmentation techniques can include swapping, deletion, random insertion, among others.

Further readings:

( Image credit: Albumentations )

Papers

Showing 25512575 of 8378 papers

TitleStatusHype
Deep Learning for Classification and Severity Estimation of Coffee Leaf Biotic StressCode0
A Comparative Study of Pre-training and Self-trainingCode0
Benchmarking Domain Generalization Algorithms in Computational PathologyCode0
ScribbleGen: Generative Data Augmentation Improves Scribble-supervised Semantic SegmentationCode0
Generative Modeling Helps Weak Supervision (and Vice Versa)Code0
GeoMix: Towards Geometry-Aware Data AugmentationCode0
Generative Adversarial Network with Spatial Attention for Face Attribute EditingCode0
Integrating Semantic Knowledge to Tackle Zero-shot Text ClassificationCode0
Generative AI for Data Augmentation in Wireless Networks: Analysis, Applications, and Case StudyCode0
Generative AI-Powered Plugin for Robust Federated Learning in Heterogeneous IoT NetworksCode0
Generating Synthetic Speech from SpokenVocab for Speech TranslationCode0
Benchmarking Children's ASR with Supervised and Self-supervised Speech Foundation ModelsCode0
Generation of Artificial CT Images using Patch-based Conditional Generative Adversarial NetworksCode0
Generating Realistic X-ray Scattering Images Using Stable Diffusion and Human-in-the-loop AnnotationsCode0
Generating Synthetic Data for Text RecognitionCode0
Benchmark for Generic Product Detection: A Low Data Baseline for Dense Object DetectionCode0
Deep Learning and Data Augmentation for Detecting Self-Admitted Technical DebtCode0
Temporal-Coded Deep Spiking Neural Network with Easy Training and Robust PerformanceCode0
Generating Images of the M87* Black Hole Using GANsCode0
Invariant Transform Experience Replay: Data Augmentation for Deep Reinforcement LearningCode0
An Empirical Evaluation of Multivariate Time Series Classification with Input Transformation across Different DimensionsCode0
Generated Graph DetectionCode0
Disconnect to Connect: A Data Augmentation Method for Improving Topology Accuracy in Image SegmentationCode0
Discovering the Unknown Knowns: Turning Implicit Knowledge in the Dataset into Explicit Training Examples for Visual Question AnsweringCode0
Lisbon Computational Linguists at SemEval-2024 Task 2: Using A Mistral 7B Model and Data AugmentationCode0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1DeiT-B (+MixPro)Accuracy (%)82.9Unverified
2ResNet-200 (DeepAA)Accuracy (%)81.32Unverified
3DeiT-S (+MixPro)Accuracy (%)81.3Unverified
4ResNet-200 (Fast AA)Accuracy (%)80.6Unverified
5ResNet-200 (UA)Accuracy (%)80.4Unverified
6ResNet-200 (AA)Accuracy (%)80Unverified
7ResNet-50 (DeepAA)Accuracy (%)78.3Unverified
8ResNet-50 (TA wide)Accuracy (%)78.07Unverified
9ResNet-50 (LoRot-E)Accuracy (%)77.72Unverified
10ResNet-50 (LoRot-I)Accuracy (%)77.71Unverified
#ModelMetricClaimedVerifiedStatus
1WideResNet-40-2 (Faster AA)Percentage error3.7Unverified
2Shake-Shake (26 2×32d) (Faster AA)Percentage error2.7Unverified
3WideResNet-28-10 (Faster AA)Percentage error2.6Unverified
4Shake-Shake (26 2×112d) (Faster AA)Percentage error2Unverified
5Shake-Shake (26 2×96d) (Faster AA)Percentage error2Unverified
#ModelMetricClaimedVerifiedStatus
1DiffAugClassification Accuracy92.7Unverified
2PaCMAPClassification Accuracy85.3Unverified
3hNNEClassification Accuracy77.4Unverified
4TopoAEClassification Accuracy74.6Unverified