license: cc-by-nc-4.0
language:
- en
pipeline_tag: zero-shot-image-classification
widget:
- src: https://huggingface.co/geolocal/StreetCLIP/resolve/main/nagasaki.jpg
candidate_labels: China, South Korea, Japan, Phillipines, Taiwan, Vietnam, Cambodia
example_title: Countries
- src: https://huggingface.co/geolocal/StreetCLIP/resolve/main/sanfrancisco.jpeg
candidate_labels: San Jose, San Diego, Los Angeles, Las Vegas, San Francisco, Seattle
example_title: Cities
library_name: transformers
tags:
- geolocalization
- geolocation
- geographic
- street
- climate
- clip
- urban
- rural
- multi-modal
Model Card for StreetCLIP
StreetCLIP is a robust foundation model for open-domain image geolocalization and other geographic and climate-related tasks.
Trained on an original dataset of 1.1 million street-level urban and rural geo-tagged images, it achieves state-of-the-art performance on multiple open-domain image geolocalization benchmarks in zero-shot, outperforming supervised models trained on millions of images.
Model Description
StreetCLIP is a model pretrained by deriving image captions synthetically from image class labels using a domain-specific caption template. This allows StreetCLIP to transfer its generalized zero-shot learning capabilities to a specific domain (i.e. the domain of image geolocalization). StreetCLIP builds on the OpenAI's pretrained large version of CLIP ViT, using 14x14 pixel patches and images with a 336 pixel side length.
Model Details
- Model type: CLIP
- Language: English
- License: Create Commons Attribution Non Commercial 4.0
- Trained from model: openai/clip-vit-large-patch14-336
Model Sources
- Paper: Preprint
- Cite preprint as:
@misc{haas2023learning,
title={Learning Generalized Zero-Shot Learners for Open-Domain Image Geolocalization},
author={Lukas Haas and Silas Alberti and Michal Skreta},
year={2023},
eprint={2302.00275},
archivePrefix={arXiv},
primaryClass={cs.CV}
}
Uses
StreetCLIP has a deep understanding of the visual features found in street-level urban and rural scenes and knows how to relate these concepts to specific countries, regions, and cities. Given its training setup, the following use cases are recommended for StreetCLIP.
Direct Use
StreetCLIP can be used out-of-the box using zero-shot learning to infer the geolocation of images on a country, region, or city level. Given that StreetCLIP was pretrained on a dataset of street-level urban and rural images, the best performance can be expected on images from a similar distribution.
Broader direct use cases are any zero-shot image classification tasks that rely on urban and rural street-level understanding or geographical information relating visual clues to their region of origin.
Downstream Use
StreetCLIP can be finetuned for any downstream applications that require geographic or street-level urban or rural scene understanding. Examples of use cases are the following:
Understanding the Built Environment
- Analyzing building quality
- Building type classifcation
- Building energy efficiency Classification
Analyzing Infrastructure
- Analyzing road quality
- Utility pole maintenance
- Identifying damage from natural disasters or armed conflicts
Understanding the Natural Environment
- Mapping vegetation
- Vegetation classification
- Soil type classifcation
- Tracking deforestation
General Use Cases
- Street-level image segmentation
- Urban and rural scene classification
- Object detection in urban or rural environments
- Improving navigation and self-driving car technology
Out-of-Scope Use
Any use cases attempting to geolocate users' private images are out-of-scope and discouraged.
Bias, Risks, and Limitations
StreetCLIP was not trained on social media images or images of identifable people for a reason. As such, any use case attempting to geolocalize users' private images
Recommendations
We encourage the community to apply StreetCLIP to applications with significant social impact of which there are many. The first three categories of potential use cases under Downstream Use list potential use cases with social impact to explore.
How to Get Started with the Model
Use the code below to get started with the model.
from PIL import Image
import requests
from transformers import CLIPProcessor, CLIPModel
model = CLIPModel.from_pretrained("geolocal/StreetCLIP")
processor = CLIPProcessor.from_pretrained("geolocal/StreetCLIP")
url = "https://huggingface.co/geolocal/StreetCLIP/resolve/main/sanfrancisco.jpeg"
image = Image.open(requests.get(url, stream=True).raw)
choices = ["San Jose", "San Diego", "Los Angeles", "Las Vegas", "San Francisco"]
inputs = processor(text=choices, images=image, return_tensors="pt", padding=True)
outputs = model(**inputs)
logits_per_image = outputs.logits_per_image # this is the image-text similarity score
probs = logits_per_image.softmax(dim=1) # we can take the softmax to get the label probabilities
Training Details
Training Data
StreetCLIP was trained on an original, unreleased street-level dataset of 1.1 million real-world, urban and rural images. The data used to train the model comes from 101 countries, biased towards western countries and not including India and China.
Preprocessing
Same preprocessing as openai/clip-vit-large-patch14-336.
Training Procedure
StreetCLIP is initialized with OpenAI's pretrained large version of CLIP ViT and then pretrained using the synthetic caption domain-specific pretraining method described in the paper corresponding to this work. StreetCLIP was trained for 3 epochs using an AdamW optimizer with a learning rate of 1e-6 on 3 NVIDIA A100 80GB GPUs, a batch size of 32, and gradient accumulation of 12 steps.
StreetCLIP was trained with the goal of matching images in the batch with the caption correponding to the correct city, region, and country of the images' origins.
Evaluation
StreetCLIP was evaluated in zero-shot on two open-domain image geolocalization benchmarks using a technique called hierarchical linear probing. Hierarchical linear probing sequentially attempts to identify the correct country and then city of geographical image origin.
Testing Data and Metrics
Testing Data
StreetCLIP was evaluated on the following two open-domain image geolocalization benchmarks.
Metrics
The objective of the listed benchmark datasets is to predict the images' coordinates of origin with as little deviation as possible. A common metric set forth in prior literature is called Percentage at Kilometer (% @ KM). The Percentage at Kilometer metric first calculates the distance in kilometers between the predicted coordinates to the ground truth coordinates and then looks at what percentage of error distances are below a certain kilometer threshold.
Results
IM2GPS
Model | 25km | 200km | 750km | 2,500km |
---|---|---|---|---|
PlaNet (2016) | 24.5 | 37.6 | 53.6 | 71.3 |
ISNs (2018) | 43.0 | 51.9 | 66.7 | 80.2 |
TransLocator (2022) | 48.1 | 64.6 | 75.6 | 86.7 |
Zero-Shot CLIP (ours) | 27.0 | 42.2 | 71.7 | 86.9 |
Zero-Shot StreetCLIP (ours) | 28.3 | 45.1 | 74.7 | 88.2 |
Metric: Percentage at Kilometer (% @ KM) |
IM2GPS3K
Model | 25km | 200km | 750km | 2,500km |
---|---|---|---|---|
PlaNet (2016) | 24.8 | 34.3 | 48.4 | 64.6 |
ISNs (2018) | 28.0 | 36.6 | 49.7 | 66.0 |
TransLocator (2022) | 31.1 | 46.7 | 58.9 | 80.1 |
Zero-Shot CLIP (ours) | 19.5 | 34.0 | 60.0 | 78.1 |
Zero-Shot StreetCLIP (ours) | 22.4 | 37.4 | 61.3 | 80.4 |
Metric: Percentage at Kilometer (% @ KM) |
Summary
Our experiments demonstrate that our synthetic caption pretraining method is capable of significantly improving CLIP's generalized zero-shot capabilities applied to open-domain image geolocalization while achieving state-of-the-art performance on a selection of benchmark metrics.
Environmental Impact
- Hardware Type: 4 NVIDIA A100 GPUs
- Hours used: 12
Citation
Cite preprint as:
@misc{haas2023learning,
title={Learning Generalized Zero-Shot Learners for Open-Domain Image Geolocalization},
author={Lukas Haas and Silas Alberti and Michal Skreta},
year={2023},
eprint={2302.00275},
archivePrefix={arXiv},
primaryClass={cs.CV}
}