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Mazdak Fatahi

Mazdak Fatahi contributes to research discovery and scholarly infrastructure.

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Published work

2 published item(s)

preprint2026arXiv

Neuromorphic visual attention for Sign-language recognition on SpiNNaker

Sign-language recognition has achieved substantial gains in classification accuracy in recent years; however, the latency and power requirements of most existing methods limit their suitability for real-time deployment. Neuromorphic sensing and processing offer an alternative paradigm based on sparse, event-driven computation that supports low-latency and energy-efficient perception. In this work, we introduce an end-to-end neuromorphic architecture for American Sign Language (ASL) fingerspelling recognition that integrates a spiking visual attention mechanism for online region-of-interest extraction with a compact spiking neural network deployed on the SpiNNaker neuromorphic platform. We benchmark the proposed system against two datasets: a synthetically generated event-based version of the Sign Language MNIST dataset and a natively recorded ASL-DVS dataset, whilst providing a comprehensive overview of Sign-language recognition and related work. This work yields competitive performance in simulation (92.27%) and comparable performance on neuromorphic hardware deployment (83.1%), while achieving the most energy-efficient architecture (0.565 mW) and low latency (3 ms) across all benchmarked approaches. Despite its compact design, the system demonstrates the suitability of task-dependent visual attention applications for edge deployment.

preprint2022arXiv

Open Source Routers: A Survey

Variety, size and complexity of data types, services and applications in Internet is continuously growing up. This increasing of complexity needs more powerful and sophisticated equipment's. One group of these devices that has essential role are routers. Some of vendors produce some elaborate and complex products but the commercial solutions are too closed and inflexible. The term "Open Source Routers" covers a lot of implementations of free software routers. Open Source Routers are solutions to overcome commercial solutions with closed platforms. In this article, we survey the existing implementations and a wide array of past and state-of-the-art projects on open software routers followed by a discussion of major challenges in this area.