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65 classes
Art
40Pan
Art
43Pencil
Art
52Shelf
Art
28Kettle
Art
60Telephone
Art
4Bike
Art
61ToothBrush
Art
13Couch
Art
37Mug
Art
5Bottle
Art
20File_Cabinet
Art
39Oven
Art
3Bed
Art
9Candles
Art
52Shelf
Art
30Knives
Art
59Table
Art
33Marker
Art
15Desk_Lamp
Art
30Knives
Art
24Fork
Art
30Knives
Art
54Sneakers
Art
22Flowers
Art
22Flowers
Art
34Monitor
Art
32Laptop
Art
19Fan
Art
57Spoon
Art
59Table
Art
27Helmet
Art
53Sink
Art
5Bottle
Art
10Chair
Art
21Flipflops
Art
55Soda
Art
58TV
Art
53Sink
Art
1Backpack
Art
24Fork
Art
22Flowers
Art
1Backpack
Art
13Couch
Art
45Printer
Art
24Fork
Art
30Knives
Art
26Hammer
Art
27Helmet
Art
1Backpack
Art
63Trash_Can
Art
13Couch
Art
34Monitor
Art
12Computer
Art
47Radio
Art
4Bike
Art
0Alarm_Clock
Art
39Oven
Art
5Bottle
Art
64Webcam
Art
33Marker
Art
58TV
Art
52Shelf
Art
60Telephone
Art
7Calculator
Art
17Eraser
Art
43Pencil
Art
57Spoon
Art
6Bucket
Art
22Flowers
Art
5Bottle
Art
29Keyboard
Art
32Laptop
Art
35Mop
Art
46Push_Pin
Art
43Pencil
Art
13Couch
Art
29Keyboard
Art
10Chair
Art
8Calendar
Art
51Screwdriver
Art
22Flowers
Art
30Knives
Art
60Telephone
Art
37Mug
Art
54Sneakers
Art
45Printer
Art
43Pencil
Art
23Folder
Art
20File_Cabinet
Art
47Radio
Art
0Alarm_Clock
Art
17Eraser
Art
26Hammer
Art
60Telephone
Art
10Chair
Art
30Knives
Art
3Bed
Art
5Bottle
Art
23Folder
Art
9Candles

Dataset Card for Office-Home

The Office-Home dataset has been created to evaluate domain adaptation algorithms for object recognition using deep learning. It consists of images from 4 different domains: Artistic images, Clip Art, Product images and Real-World images. For each domain, the dataset contains images of 65 object categories found typically in Office and Home settings.

Dataset Details

The dataset information is based on the original dataset website: https://www.hemanthdv.org/officeHomeDataset.html. This implementation is based on the shared data (images + a CSV file).

Dataset Sources

Use in FL

In order to prepare the dataset for the FL settings, we recommend using Flower Dataset (flwr-datasets) for the dataset download and partitioning and Flower (flwr) for conducting FL experiments.

To partition the dataset, do the following.

  1. Install the package.
pip install flwr-datasets[vision]
  1. Use the HF Dataset under the hood in Flower Datasets.
from flwr_datasets import FederatedDataset
from flwr_datasets.partitioner import IidPartitioner

fds = FederatedDataset(
    dataset="flwrlabs/office-home",
    partitioners={"train": IidPartitioner(num_partitions=10)}
)
partition = fds.load_partition(partition_id=0)

Dataset Structure

Data Instances

The first instance of the train split is presented below:

{
'image': <PIL.JpegImagePlugin.JpegImageFile image mode=RGB size=640x640>,
 'domain': 'Real World',
 'label': 0
}

Data Split

DatasetDict({
    train: Dataset({
        features: ['image', 'domain', 'label'],
        num_rows: 15588
    })
})

Implementation details

The CSV file from the original source contains paths to samples with a subfolder named "Clock"; however, such data does not exist. However, if counting this category, there would be 66 classes. I believe this class was forgotten to be edited because there's a different class present in the dataset named "Alarm-Clock". This state better reflects the number of samples specified in the paper.

Citation

When working with the Office-Home dataset, please cite the original paper. If you're using this dataset with Flower Datasets and Flower, cite Flower.

BibTeX:

Original paper:

@inproceedings{venkateswara2017deep,
  title={Deep hashing network for unsupervised domain adaptation},
  author={Venkateswara, Hemanth and Eusebio, Jose and Chakraborty, Shayok and Panchanathan, Sethuraman},
  booktitle={Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition},
  pages={5018--5027},
  year={2017}
}

Flower:

@article{DBLP:journals/corr/abs-2007-14390,
  author       = {Daniel J. Beutel and
                  Taner Topal and
                  Akhil Mathur and
                  Xinchi Qiu and
                  Titouan Parcollet and
                  Nicholas D. Lane},
  title        = {Flower: {A} Friendly Federated Learning Research Framework},
  journal      = {CoRR},
  volume       = {abs/2007.14390},
  year         = {2020},
  url          = {https://arxiv.org/abs/2007.14390},
  eprinttype    = {arXiv},
  eprint       = {2007.14390},
  timestamp    = {Mon, 03 Aug 2020 14:32:13 +0200},
  biburl       = {https://dblp.org/rec/journals/corr/abs-2007-14390.bib},
  bibsource    = {dblp computer science bibliography, https://dblp.org}
}

Dataset Card Contact

If you have any questions about the dataset preprocessing and preparation, please contact Flower Labs.

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