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Fifteen Natural Scene Categories
The Fifteen Natural Scene Categories database is used for bag-of-features based image classification problem. -
UT Zappos50K dataset
UT Zappos50K dataset -
Split CIFAR100
A variant of CIFAR-100 dataset, where the original dataset is split into 20 disjoint tasks, each consisting of 2,500 samples from 5 classes. -
FashionMNIST and CIFAR-10
The dataset used in the paper is FashionMNIST and CIFAR-10, which are commonly used datasets for image classification tasks. -
ImageNet and SST2 datasets
The dataset used in this study for image and text classification tasks. -
MIDOG21 Dataset
A dataset used for testing the proposed Deep Feature Learning method for histopathology image classification. -
In-House Dataset
A dataset used for training and testing the proposed Deep Feature Learning method for histopathology image classification. -
Evaluation dataset for histopathology image classification
A dataset composed of 35334 breast histopathology images at zoom x5 (1.76 µm per pixel) distributed amongst 23 imbalanced classes, which include both common tumor and benign... -
Occupancy Detection in Vehicles Using Fisher Vector Image Representation
A dataset of 3000 images collected on a public roadway for front seat vehicle occupancy detection. -
CIFAR-100 and AGNews
Two datasets used for multi-task learning, CIFAR-100 and AGNews. -
ImageNet Noise
The dataset used in the paper is the ImageNet noise dataset, which contains 60,000 32x32 color images with random labels. -
MNIST data set
The MNIST data set is a dataset used for testing the performance of the DisDF. -
ImageNet ILSVRC 2012 validation dataset
The ImageNet ILSVRC 2012 validation dataset is used to evaluate the proposed approach. -
ResNet-VAE
The dataset used in this paper is a large-scale neural network model, specifically a ResNet-VAE model, trained on the CIFAR-10 dataset. -
500px dataset
A dataset from 500px, an online photography website, containing 225,922 users and 300,000 photos. -
ResNet-56 Dataset
The dataset used in the paper for hyper-parameter tuning using transient cloud resources. -
MNIST, Fashion MNIST, and CIFAR-10
The dataset used in the paper is MNIST, Fashion MNIST, and CIFAR-10. -
MOON dataset
The MOON dataset is used to test the proposed TEMP-based spiking neural network.