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Datasets/AID

AID

Aerial Image Dataset

ImagesIntroduced 2016-08-18

AID is a new large-scale aerial image dataset, by collecting sample images from Google Earth imagery. Note that although the Google Earth images are post-processed using RGB renderings from the original optical aerial images, it has proven that there is no significant difference between the Google Earth images with the real optical aerial images even in the pixel-level land use/cover mapping. Thus, the Google Earth images can also be used as aerial images for evaluating scene classification algorithms.

The new dataset is made up of the following 30 aerial scene types: airport, bare land, baseball field, beach, bridge, center, church, commercial, dense residential, desert, farmland, forest, industrial, meadow, medium residential, mountain, park, parking, playground, pond, port, railway station, resort, river, school, sparse residential, square, stadium, storage tanks and viaduct. All the images are labelled by the specialists in the field of remote sensing image interpretation, and some samples of each class are shown in Fig.1. In all, the AID dataset has a number of 10000 images within 30 classes.

The images in AID are actually multi-source, as Google Earth images are from different remote imaging sensors. This brings more challenges for scene classification than the single source images like UC-Merced dataset. Moreover, all the sample images per each class in AID are carefully chosen from different countries and regions around the world, mainly in China, the United States, England, France, Italy, Japan, Germany, etc., and they are extracted at different time and seasons under different imaging conditions, which increases the intra-class diversities of the data.

Benchmarks

2D Semantic Segmentation/Accuracy3D Character Animation From A Single Photo/AccuracyAnimation/AccuracyScene Parsing/AccuracyZero-Shot Learning/Accuracy

Related Benchmarks

AID-VQA/Visual Question Answering/Acc. (test)AID-VQA/Visual Question Answering (VQA)/Acc. (test)AIDA-CoNLL/Entity Disambiguation/In-KB AccuracyAIDA-CoNLL/Entity Disambiguation/Micro-F1AIDA-CoNLL/Entity Linking/Micro-F1 strongAIDA-CoNLL/Entity Typing/Micro-F1AIDA/testc/Entity Linking/Micro-F1 strongAIDER/Image Classification/Test F1 scoreAIDERV2/Image Classification/Test F1 scoreAIDS/Classification/AccuracyAIDS/Classification/Inference Time (ms)AIDS/Continual Learning/1:3 AccuracyAIDS/Graph Classification/AccuracyAIDS/Graph Classification/Inference Time (ms)

Statistics

Papers
40
Benchmarks
5

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Tasks

2D Semantic Segmentation3D Character Animation From A Single PhotoAnimationObject Detection In Aerial ImagesRemote Sensing Image ClassificationScene ClassificationScene ParsingScene RecognitionTransductive Zero-Shot ClassificationZero-Shot LearningZero-shot Classification (unified classes)