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Columbia Object Image Library (COIL100)
The COIL100 dataset is a benchmark dataset for object recognition and image classification. -
PASCAL Visual Object Classes Challenge 2007 (VOC2007) results
The VOC2007 dataset is a benchmark dataset for object recognition and image classification. -
Facades dataset
Spatial pattern templates for recognition of objects with regular structure. -
Selective Search for Object Recognition
Selective search is a method for object detection. -
CIFAR-100 Dataset
The CIFAR-100 dataset consists of 100 classes of 32 × 32 RGB images with 60,000 training and 10,000 testing examples. -
Caltech-UCSD Birds-200-2011 Dataset
The Caltech-UCSD Birds-200-2011 Dataset consists of 11,169 bird images from 200 categories and each category has 60 images averagely. -
CIFAR-10, CIFAR-100
CIFAR-10 and CIFAR-100 are standard vision datasets with 50,000 training images across 10 and 100 classes, respectively. -
Stanford Cars dataset
The Stanford Cars dataset is a dataset of images of cars, with 196 categories and approximately 16,000 images. The authors created a synthetic dataset by adding occlusions of... -
Willow Object Class
The Willow Object Class dataset comprises 304 images gathered from Caltech-256 (Griffin et al., 2007) and Pascal VOC 2007 (Everingham et al., 2007). -
Small-NORB
The Small-NORB dataset is a dataset of 4,000 images of 6 classes, each class containing 60 images of size 16x16. -
CIFAR10-DVS
The dataset used in the paper is CIFAR10-DVS, a dataset of 10,000 event streams of 128x128 images. -
MiniImagenet
The MiniImagenet dataset is a benchmark for few-shot learning, consisting of 60,000 images from 21 classes, each with 300 images. -
PASCAL VOC 2007
Multi-label image recognition is a practical and challenging task compared to single-label image classification. -
Caltech-UCSD Birds 200
The Caltech-256 object category dataset is used for the feature extraction step, and the Omniglot dataset is used for the evaluation. -
VisDA-2017
VisDA-2017 is a simulation-to-real dataset with two extremely distinct domains: Synthetic renderings of 3D models and Real collected from photo-realistic or real-image datasets. -
CIFAR-10 Dataset
The dataset used in this paper is a neural network, and the authors used it to test the performance of their lookahead pruning method. -
ImageNet Large Scale Visual Recognition Challenge
A benchmark for low-shot recognition was proposed by Hariharan & Girshick (2017) and consists of a representation learning phase without access to the low-shot classes and a...