Wellington Avelino

2papers

2 Papers

68.5ETJun 2
Functional Interface Blocks for Neuromorphic Hardware: A Junction-Centered Framework

Wellington Avelino, Yann Beillard, Fabien Allibart et al.

Heterogeneous neuromorphic hardware integrates devices with dissimilar electrical characteristics and dynamics, making functional compatibility at their interconnections a primary design challenge. Direct coupling alone is insufficient to ensure correct operation, because the load-line conditions established at each junction determine the effective operating regime. Here, we propose a junction-centered interface framework in which inter-device connections are described through assigned drive/sense roles and organized into canonical functional interface blocks. As a concrete hardware realization, a second-generation current conveyor (CCII)-based implementation is then adopted as a composite realization of these interface primitives. The framework is validated experimentally in a Pavlovian-conditioning demonstrator combining a memristive synapse with a unijunction-transistor (UJT) post-neuron. By linking local junction conditions to reusable interface functions, the proposed methodology provides a systematic basis for the design and analysis of heterogeneous neuromorphic systems.

IVJun 11, 2024
Progress Towards Decoding Visual Imagery via fNIRS

Michel Adamic, Wellington Avelino, Anna Brandenberger et al.

We demonstrate the possibility of reconstructing images from fNIRS brain activity and start building a prototype to match the required specs. By training an image reconstruction model on downsampled fMRI data, we discovered that cm-scale spatial resolution is sufficient for image generation. We obtained 71% retrieval accuracy with 1-cm resolution, compared to 93% on the full-resolution fMRI, and 20% with 2-cm resolution. With simulations and high-density tomography, we found that time-domain fNIRS can achieve 1-cm resolution, compared to 2-cm resolution for continuous-wave fNIRS. Lastly, we share designs for a prototype time-domain fNIRS device, consisting of a laser driver, a single photon detector, and a time-to-digital converter system.