Introduction #
Authors introduce the Fruit component for classification task within The Tree Dataset of Urban Street, encompassing 4,101 high-resolution images distributed across 29 classes. With these comprehensive resources at your disposal, this subset empowers researchers and practitioners to delve deep into the detailed analysis of urban street greenery, offering a valuable resource for comprehensive instance segmentation studies. Automatic tree species identification can be used to realize autonomous street tree inventories and help people without botanical knowledge and experience to better understand the diversity and regionalization of different urban landscapes.
The Tree Dataset of Urban Street sub-datasets:
Classification:
- Branch 1485 images, 13 classes (1.4G) (available on DatasetNinja)
- Trunk 7675 images, 29 classes (6.4G) (available on DatasetNinja)
- Leaf 21127 images, 50 classes (13.6G) (available on DatasetNinja)
- Tree 4804 images, 23 classes (4.3G) (available on DatasetNinja)
- Fruit 4101 images, 29 classes (2.1G) (current)
- Flower 2275 images, 17 classes (1.3G) (available on DatasetNinja)
Segmentation:
- Tree 3949 images, 22 classes (7.9G) (available on DatasetNinja)
- Branch 1485 images, 13 classes (3.1G) (available on DatasetNinja)
- Trunk 7675 images, 29 classes (12.9G) (available on DatasetNinja)
- Leaf 9763 images, 39 classes (10.2G) (available on DatasetNinja)
Detection:
- Leaf 9763 images, 39 classes (11G) (available on DatasetNinja)
Examples of Urban Street: Fruit (classification task).
About Tree Dataset of Urban Street:
Annotations were performed in a fine-grained manner by using polygons (bitmap in supervisely) to outline individual objects. Authors assessed the performance of various vision algorithms on different classification and segmentation tasks, including tree species identification and instance segmentation.
The proposed dataset was designed to capture urban street trees with subtropical or temperate monsoon climates in China. Our data collection and annotation methods were carefully created to capture the high variability of street trees. From February to October 2022, tens of thousands of tree images were acquired with mobile devices, covering spring, summer, fall and winter in 10 cities.
Similar to Cityscapes (Cordts et al., 2016) (available on DatasetNinja) and ADE20K (Zhou et al., 2019) (available on DatasetNinja), authors divide each organ dataset into separate training (train), validation (val) and test (test) sets.
Summary #
Tree Dataset of Urban Street: Fruit Classification is a dataset for a classification task. It is used in the environmental industry.
The dataset consists of 4101 images with 0 labeled objects. There are 3 splits in the dataset: train (3296 images), val (408 images), and test (397 images). Alternatively, the dataset could be split into 29 classification image sets: magnolia_liliflora_desr (188 images), photinia_serratifolia (188 images), euonymus_japonicus (187 images), magnolia_grandiflora_l (176 images), ginkgo_biloba (175 images), pittosporum_tobira (174 images), styphnolobium_japonicum (173 images), liriodendron_chinense (169 images), lagerstroemia_indica (166 images), albizia_julibrissin (162 images), elaeocarpus_decipiens (160 images), nandina_domestica (159 images), acer_palmatum (154 images), llex_cornuta (153 images), sapindus_saponaria (148 images), koelreuteria_paniculata (142 images), michelia_chapensis (141 images), podocarpus_macrophyllus (138 images), celtis_sinensis (136 images), liquidambar_formosana (132 images), cinnamomum_camphora_(linn)_presl (130 images), platycladus_orientalis_beverlevensis (128 images), triadica_sebifera (125 images), taxodium_ascendens_brongn (120 images), prunus_cerasifera_f._atropurpurea (100 images), prunus_persica (86 images), malushalliana (84 images), metasequoia_glyptostroboides (76 images), and platanus (31 images). The dataset was released in 2022 by the Zhejiang Agriculture and Forestry University.
Here are the visualized examples for the classes:
Explore #
Urban Street: Fruit Classification dataset has 4101 images. Click on one of the examples below or open "Explore" tool anytime you need to view dataset images with annotations. This tool has extended visualization capabilities like zoom, translation, objects table, custom filters and more. Hover the mouse over the images to hide or show annotations.
License #
Tree Dataset of Urban Street: Fruit Classification is under GNU LGPL 3.0 license.
Citation #
If you make use of the Urban Street: Fruit data, please cite the following reference:
@article{YANG2023107852,
title = {Urban street tree dataset for image classification and instance segmentation},
journal = {Computers and Electronics in Agriculture},
volume = {209},
pages = {107852},
year = {2023},
issn = {0168-1699},
doi = {https://doi.org/10.1016/j.compag.2023.107852},
url = {https://www.sciencedirect.com/science/article/pii/S0168169923002405},
author = {Tingting Yang and Suyin Zhou and Zhijie Huang and Aijun Xu and Junhua Ye and Jianxin Yin},
keywords = {Urban street tree, Tree dataset, Image classification, Instance segmentation, Image segmentation, Tree species identification},
}
If you are happy with Dataset Ninja and use provided visualizations and tools in your work, please cite us:
@misc{ visualization-tools-for-urban-street-fruit-dataset,
title = { Visualization Tools for Urban Street: Fruit Classification Dataset },
type = { Computer Vision Tools },
author = { Dataset Ninja },
howpublished = { \url{ https://datasetninja.com/urban-street-fruit } },
url = { https://datasetninja.com/urban-street-fruit },
journal = { Dataset Ninja },
publisher = { Dataset Ninja },
year = { 2024 },
month = { nov },
note = { visited on 2024-11-21 },
}
Download #
Dataset Urban Street: Fruit Classification can be downloaded in Supervisely format:
As an alternative, it can be downloaded with dataset-tools package:
pip install --upgrade dataset-tools
… using following python code:
import dataset_tools as dtools
dtools.download(dataset='Urban Street: Fruit Classification', dst_dir='~/dataset-ninja/')
Make sure not to overlook the python code example available on the Supervisely Developer Portal. It will give you a clear idea of how to effortlessly work with the downloaded dataset.
The data in original format can be downloaded here.
Disclaimer #
Our gal from the legal dep told us we need to post this:
Dataset Ninja provides visualizations and statistics for some datasets that can be found online and can be downloaded by general audience. Dataset Ninja is not a dataset hosting platform and can only be used for informational purposes. The platform does not claim any rights for the original content, including images, videos, annotations and descriptions. Joint publishing is prohibited.
You take full responsibility when you use datasets presented at Dataset Ninja, as well as other information, including visualizations and statistics we provide. You are in charge of compliance with any dataset license and all other permissions. You are required to navigate datasets homepage and make sure that you can use it. In case of any questions, get in touch with us at hello@datasetninja.com.