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More generalized vision of the field imagery process
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@@ -6,7 +6,7 @@ next: /docs/dissemination/
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## The Mission
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Commercial street-level imagery is often locked behind restrictive licenses, proprietary viewers, and paywalls, making it inaccessible for researchers, urban planners, and the general public. We are building a sovereign, open-source alternative for Canada.
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Commercial street-level imagery is often locked behind restrictive licenses, proprietary viewers, and paywalls, making it inaccessible to our target audience. We are building a sovereign, open-source alternative for Canada.
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By self-hosting a **[Panoramax](https://panoramax.fr/)** instance, we provide a decentralized platform where field imagery is treated as a public utility: fully downloadable, API-accessible, and privacy-compliant.
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@@ -14,9 +14,8 @@ By self-hosting a **[Panoramax](https://panoramax.fr/)** instance, we provide a
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## The Infrastructure
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Our field imagery pipeline is built on the **Panoramax** ecosystem, a federated open-source alternative to Google Street View. Instead of relying on centralized corporate servers, we operate a sovereign instance that guarantees data permanence and open access.
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Our field imagery pipeline is built on the **Panoramax** ecosystem, a federated open-source alternative to Google Street View that guarantees data permanence and open access.
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* **Platform**: Self-hosted Panoramax instance running on our internal infrastructure.
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* **Storage**: High-performance object storage backend for hosting terabytes of 360° and flat field imagery.
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* **Federation**: Our instance connects to the global Panoramax federation, ensuring that while the data is hosted in Canada, it is discoverable worldwide through the global panoramax catalog.
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@@ -28,8 +27,8 @@ We treat field imagery as a data engineering challenge, ensuring "time-to-insigh
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1. **Ingestion**: Raw imagery is captured using diverse hardware (ex. 360° cameras, mobile rigs, meta glasses, etc.) and ingested by our systems.
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2. **Privacy & Anonymization**: Before publication, all imagery undergoes a rigorous privacy scrub. We utilize automated detection pipelines to blur faces and license plates, ensuring compliance with Canadian privacy standards while maintaining data utility.
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3. **Standardization**: Images are processed into standardized, web-optimized tiles for the viewer and high-resolution archives for analysis.
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4. **Metadata Extraction**: We extract and normalize/strip EXIF and GPS telemetry, indexing it into a **[FAIR Catalog](https://stac-utils.github.io/stac-geoparquet/latest/spec/stac-geoparquet-spec/)** compliant API.
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3. **Standardization**: Images are processed into systems-ready formats, making it ready for analysis.
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4. **Metadata Extraction**: We extract and normalize/strip identifiying information (ex. EXIF and GPS telemetry), indexing it into a **[FAIR Catalog](https://stac-utils.github.io/stac-geoparquet/latest/spec/stac-geoparquet-spec/)**.
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---
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@@ -40,4 +39,3 @@ Unlike commercial platforms that only offer a "view" of the data, we provide the
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* **API Access**: Full programmatic access via the Panoramax REST API for querying imagery by location, date, or sequence.
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* **Bulk Datasets**: Curated dumps of street-level imagery available for computer vision training, asset management, and change detection models.
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* **[FAIR Data Catalog](https://stac-utils.github.io/stac-geoparquet/latest/spec/stac-geoparquet-spec/) Integration**: Seamless integration with geospatial workflows (ex. DuckDB, QGIS, Python, R, Julia, etc.).
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`
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