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BCI / Neurotechnology IP P300 & SSVEP Calibration

Universal Parametric Calibration Front-End for Brain–Computer Interfaces (P300 & SSVEP)

A non-confidential overview of a patent-pending calibration architecture that builds individualized tuning maps from time-varying stimulus parameters and uses them to select robust operating regions and feature sets for BCI decoders.

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Non-confidential summary • Licensing & collaboration • NDA available for full documentation
Intellectual Property Status
Patent application
P.453995
Office
Polish Patent Office (UPRP)
Filing date
06 Dec 2025
Status
Patent pending (filed in Poland)

Indicative scope: method + system + software for parametric probing, tuning-map construction, algorithmic selection of parameter regions/features for decoders; optional tuning-map database and transfer-learning acceleration. Full claim scope and implementation details are available under NDA.

Who is this for?

Teams building P300 and/or SSVEP BCIs who want more reliable, faster onboarding than fixed “preset” calibration. The approach is designed for production constraints: repeatability, robustness, and integration with existing decoders.

P300 spellers / AAC SSVEP selection & control Hands-free HCI Research validation Rapid personalization
1) What is the technology?

The invention adds a distinct architectural layer to stimulus-evoked BCI systems: a parametric calibration front-end that (i) varies stimulus parameters over time, (ii) measures neural response features, and (iii) builds an individualized tuning map linking parameters × neurofeatures. The front-end then outputs a compact configuration (selected parameter regions + feature set) used by one or more decoders.

  • Parametric probing: sweep/modulate ≥1 stimulus parameter (optionally ≥2) during calibration.
  • Tuning map: individualized response profile over parameters × extracted features.
  • Algorithmic selection: choose robust operating regions (“hot spots”) and feature sets for decoding.
  • Reusable front-end: selected features can feed multiple decoders within the same paradigm family (P300/SSVEP) without repeating the full sweep.
2) What problem does it solve?

Many production BCI pipelines rely on a small set of fixed presets (e.g., a few frequencies / timings) and a narrow evaluation metric. This can create brittle performance: a user works well only for a narrow setting, or performance drifts across sessions.

  • Preset-based calibration can miss narrow maxima (small parameter changes can materially affect response strength and separability).
  • Manual tuning is slow and hard to scale across users, devices, and sessions.
  • Calibration data is often under-utilized (no unified map that can be re-used to set up decoding).
3) What is the innovation (claim-aligned, non-confidential)?

A systematic, reusable calibration layer that explicitly models how responses vary with stimulus parameters and uses that structure to select decoding inputs—rather than relying on static presets.

  • Parameter–feature coupling: build an individualized map over stimulus parameters × extracted neural features.
  • Quality scoring: evaluate candidate regions/features with objective criteria (e.g., response strength, stability, separability).
  • Robust selection: pick operating regions and feature sets that remain stable across trials/sessions.
  • Exportable configuration: generate a single feature/parameter bundle consumable by decoders (software-defined front-end).
  • Optional acceleration: use a tuning-map database + transfer learning to prioritize promising regions for new users.
4) Key benefits for partners
  • Shorter calibration (focus probing on informative regions; fewer “wasted” trials).
  • Higher personalization (user-specific tuning profile; easier re-calibration over time).
  • More robust decoding (less sensitivity to brittle preset choices).
  • Better data economics (a structured map enables reuse and systematic selection).
  • Scalable deployment (on-device, cloud, or hybrid pipelines).

Note: This page intentionally avoids enabling implementation specifics (exact feature sets, scoring functions, parameter schedules, and validation results). Those materials are shared under NDA.

Collaboration & Licensing

The patent owner is open to structured engagement (pre-grant and post-grant), including evaluation licenses and integration projects. Typical options include:

  • Non-exclusive evaluation / R&D license (pre-grant) for feasibility assessment and internal prototyping.
  • Proof-of-concept integration into an existing P300/SSVEP stack (on-device or cloud).
  • Commercial non-exclusive license for product deployment.
  • Exclusive field-of-use license (e.g., AAC spellers, AR/VR HCI, clinical neurotech), subject to terms.

Documentation policy: Full technical documentation, claim charts, and the complete filing package are provided after signing a standard NDA. For inquiries, contact: contact@patrykrosa.com.

© 2026 Patryk Rosa · All rights reserved
Disclaimer: This is a non-confidential overview intended for initial discussions; it does not disclose the full invention implementation and is not legal advice.