ADR-001 documents the decision to use a separate Python container for OCR (Surya + Kraken), the interface contract, and why alternatives like Tess4J were rejected. ADR-002 documents the decision to store polygon annotations as JSONB with a 4-point CHECK constraint, backed by an AttributeConverter. Refs #226, #227 Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
3.1 KiB
ADR-001: OCR Python Microservice
Status
Accepted
Context
The Familienarchiv needs OCR capability to pre-populate transcription blocks from scanned documents. Two OCR engines are required:
- Surya — transformer-based, handles typewritten and modern Latin handwriting
- Kraken — historical HTR model support, required for pre-1941 German Kurrent/Suetterlin scripts
Both engines exist exclusively in the Python ecosystem. There are no production-quality Java bindings for either engine. Tess4J (Tesseract for Java) was considered but rejected: Tesseract has poor accuracy on degraded historical handwriting and no HTR-United model support.
The server has no GPU. CPU-only inference is the target (16-32 GB system RAM).
Decision
Introduce a separate Python container (ocr-service) that exposes a simple HTTP API. Spring Boot calls this service via RestClient. The Python service is stateless — all job tracking and business logic remain in Spring Boot.
Interface contract:
Request:
{
"pdfUrl": "http://minio:9000/archive-documents/abc.pdf?presigned...",
"scriptType": "HANDWRITING_KURRENT",
"language": "de"
}
Response:
[
{
"pageNumber": 0,
"x": 0.12, "y": 0.08, "width": 0.76, "height": 0.04,
"polygon": [[0.12,0.08],[0.88,0.09],[0.87,0.12],[0.13,0.11]],
"text": "Sehr geehrter Herr ..."
}
]
Coordinates are normalized (0-1) relative to page dimensions.
Java-side integration:
OcrClientinterface withextractBlocks()method — mockable for unit testsOcrHealthClientinterface withisHealthy()— separate concern from block extractionRestClientOcrClientimplements both interfacesOcrServiceorchestrates: presigned URL generation, OCR call, block mapping, TranscriptionService delegation
Docker networking:
ocr-serviceis on the internal Docker network only — no host port mapping- Spring Boot reaches it via
http://ocr-service:8000 - Health check with
start_period: 60sto account for model loading (~30-60s on CPU)
Alternatives Considered
| Alternative | Why rejected |
|---|---|
| Tess4J (Tesseract in Java) | No HTR-United model support; poor Kurrent accuracy |
| Calling Python via ProcessBuilder | Fragile, no health checks, model reloading on every call |
| Embedding Python via GraalVM | Experimental, complex dependency management for ML libraries |
| External SaaS OCR (Google Vision, AWS Textract) | Data sovereignty concern for private family documents; no Kurrent support |
Consequences
Easier:
- Each engine is used via its native Python API — no bridging complexity
- OCR service can be updated independently of the main application
- Models can be swapped via volume mount without code changes
Harder:
- One additional container to operate (memory, health checks, restarts)
- Integration tests require WireMock stub — real OCR service is too slow for CI
- Presigned URL TTL must be managed (15-30 min recommended)
Future Direction
- LISTEN/NOTIFY from PostgreSQL to push progress events when scaling to multiple instances
- GPU acceleration if the server is upgraded — only the Docker image needs to change