Europeana: mapping postcards: Difference between revisions
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Using the APIs provided by Europeana, we used web scrapers to collect relevant data. Initially, we utilized the search API to obtain all records related to postcards with an open copyright status, resulting in 39,587 records. Subsequently, we filtered these records using the record API, retaining only those records whose metadata allowed for direct image retrieval via a web scraper, amounting to 20,000 records in total. We then organized this metadata, preserving only the attributes relevant to our research, such as the providing country, the providing institution, and potential coordinates. Employing a method of random sampling with this metadata, we downloaded some image samples locally for analysis. | Using the APIs provided by Europeana, we used web scrapers to collect relevant data. Initially, we utilized the search API to obtain all records related to postcards with an open copyright status, resulting in 39,587 records. Subsequently, we filtered these records using the record API, retaining only those records whose metadata allowed for direct image retrieval via a web scraper, amounting to 20,000 records in total. We then organized this metadata, preserving only the attributes relevant to our research, such as the providing country, the providing institution, and potential coordinates. Employing a method of random sampling with this metadata, we downloaded some image samples locally for analysis. | ||
== OCR == | == Optical character recognition(OCR) == | ||
== Prediction using ChatGPT == | == Prediction using ChatGPT == | ||
Due to the suboptimal performance of applying NER directly on OCR results, as OCR may contain grammatical errors in recognition or the text on the postcard itself may lack the names of locations, we decided to introduce an LLM, like ChatGPT, to attempt this task. Using OpenAI APIs, we mainly explored two approaches: one was to use GPT-3.5 for location prediction based on OCR results, and the other was to directly use GPT-4 for predictions based on images. Additionally, we required ChatGPT to return a fixed JSON format object, including the predicted country and city, eliminating the need for NER. We found that both methods significantly improved upon previous efforts. Although GPT-4 showed better performance, as it also had the image itself as additional information, we discovered that after multiple optimizations of the GPT-3.5 prompt, its results were not much inferior to GPT-4. Moreover, considering the cost, using OCR results with an optimized prompt for GPT-3.5 is an excellent method. Therefore, we use this as our main pipeline. | Due to the suboptimal performance of applying NER directly on OCR results, as OCR may contain grammatical errors in recognition or the text on the postcard itself may lack the names of locations, we decided to introduce an LLM, like ChatGPT, to attempt this task. Using OpenAI APIs, we mainly explored two approaches: one was to use GPT-3.5 for location prediction based on OCR results, and the other was to directly use GPT-4 for predictions based on images. Additionally, we required ChatGPT to return a fixed JSON format object, including the predicted country and city, eliminating the need for NER. We found that both methods significantly improved upon previous efforts. Although GPT-4 showed better performance, as it also had the image itself as additional information, we discovered that after multiple optimizations of the GPT-3.5 prompt, its results were not much inferior to GPT-4. Moreover, considering the cost, using OCR results with an optimized prompt for GPT-3.5 is an excellent method. Therefore, we use this as our main pipeline. |
Revision as of 10:40, 19 December 2023
Introduction & Motivation
Deliverables
- 39,587 records related to postcards with image copyrights, along with their metadata, from the Europeana website.
- OCR results of a sample set of 350 images containing text.
- GPT-3.5 prediction results for a sample set of 350 images containing text, based on OCR results.
- A high-quality, manually annotated Ground Truth for a sample set of 309 images.
- GPT-3.5 prediction results for Ground Truth.
- GPT-4 prediction results for Ground Truth.
- An interactive webpage displaying the mapping of the postcards.
- The GitHub repository contains all the codes for the whole project.
Methodologies
Data collection
Using the APIs provided by Europeana, we used web scrapers to collect relevant data. Initially, we utilized the search API to obtain all records related to postcards with an open copyright status, resulting in 39,587 records. Subsequently, we filtered these records using the record API, retaining only those records whose metadata allowed for direct image retrieval via a web scraper, amounting to 20,000 records in total. We then organized this metadata, preserving only the attributes relevant to our research, such as the providing country, the providing institution, and potential coordinates. Employing a method of random sampling with this metadata, we downloaded some image samples locally for analysis.
Optical character recognition(OCR)
Prediction using ChatGPT
Due to the suboptimal performance of applying NER directly on OCR results, as OCR may contain grammatical errors in recognition or the text on the postcard itself may lack the names of locations, we decided to introduce an LLM, like ChatGPT, to attempt this task. Using OpenAI APIs, we mainly explored two approaches: one was to use GPT-3.5 for location prediction based on OCR results, and the other was to directly use GPT-4 for predictions based on images. Additionally, we required ChatGPT to return a fixed JSON format object, including the predicted country and city, eliminating the need for NER. We found that both methods significantly improved upon previous efforts. Although GPT-4 showed better performance, as it also had the image itself as additional information, we discovered that after multiple optimizations of the GPT-3.5 prompt, its results were not much inferior to GPT-4. Moreover, considering the cost, using OCR results with an optimized prompt for GPT-3.5 is an excellent method. Therefore, we use this as our main pipeline.
Construction of Ground Truth
Web Application
Result Assessment
Limitations & Future work
For postcards without text, we currently rely on predictions made by GPT-4, which can be expensive. Subsequently, we may need to explore more methods.
Projet plan & Milestones
Projet plan
Timeframe | Task | Completion |
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Week 4 |
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✓ |
Week 5 |
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✓ |
Week 6 |
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✓ |
Week 7 |
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✓ |
Week 8 |
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✓ |
Week 9 |
|
✓ |
Week 10 |
|
✓ |
Week 11 |
|
✓ |
Week 12 |
|
✓ |
Week 13 |
|
✓ |
Week 14 |
|
✓ |