Extracted Features of Cross-time Amsterdam Dataset
Datacite citation style:
Yildiz, Burak; Khademi, Seyran (2021): Extracted Features of Cross-time Amsterdam Dataset. Version 2. 4TU.ResearchData. dataset. https://doi.org/10.4121/14572644.v2
Other citation styles (APA, Harvard, MLA, Vancouver, Chicago, IEEE) available at Datacite
Dataset
choose version:
version 4 - 2022-06-07 (latest)
version 3 - 2022-04-12
version 2 - 2021-06-08
version 1 - 2021-05-12
This collection contains feature files where the features are extracted on Cross-time Amsterdam dataset using various methods and models such as SIFT, LIFT, and pre-trained VGG-16, ResNets, NetVLAD, AP-GeM and supervisely and self-supervisely trained models. The details of feature extraction procedure and other details can be found on https://github.com/seyrankhademi/cross-time-dataset.
history
- 2021-05-12 first online
- 2021-06-08 published, posted
publisher
4TU.ResearchData
format
Pickle file
organizations
TU Delft, Faculty of Electrical Engineering, Mathematics and Computer Science Intelligent Systems
DATA
files (11)
- 20,282,404 bytesMD5:
91099171982d0e87ce2386b8a8f403ac
ap_gem.p - 2,705,170 bytesMD5:
b2c3b30a622b05f8a19eab807075dcaa
lift_piccadilly_128.p - 322,832,359 bytesMD5:
ce32fec7843201fc40bcdbf7ba45a8d8
netvlad_pittsburgh250k.p - 20,282,404 bytesMD5:
a5a399839030986b593dcd407c834abf
resnet101_imagenet.p - 20,282,404 bytesMD5:
3c264112b53e464319b34cb0f642b4c0
resnet50_imagenet.p - 2,705,170 bytesMD5:
89c297423fe08eaba61c81fc437c8f75
sift_128.p - 322,832,359 bytesMD5:
4491aa66bc975f72db551edc4781735e
simsiam_netvlad_pittsburgh250k.p - 5,153,797 bytesMD5:
548cbe0d826383a6613b62e120e043ed
simsiam_resnet18_imagenet.p - 5,153,797 bytesMD5:
9f84cda8d62c8c0b18b3d3ae188afdd7
simsiam_resnet18_scratch.p - 5,153,797 bytesMD5:
883aabaf2968e4b6f23730802cad0526
triplet_resnet18_imagenet.p - 247,199,719 bytesMD5:
bfd13404f9168ca3f87bb80ac267b20f
vgg16_imagenet.p -
download all files (zip)
974,583,380 bytes unzipped