Transporter: A 128ร4 SPAD Imager with On-chip Encoder for Spiking Neural Network-based Processing
Jun 2, 2025ยท
ยท
1 min read

Yang Lin
Abstract
Single-photon avalanche diodes (SPADs) are widely used today in time-resolved imaging applications, however traditional architectures rely on time-to-digital converters (TDCs) and histogram-based processing, leading to significant data transfer and processing challenges. Previous work based on recurrent neural networks has realized histogram-free processing. To further address these limitations, we propose a novel paradigm that eliminates TDCs by integrating in-sensor spike encoders. This approach enables preprocessing of photon arrival events in the sensor while significantly compressing data, reducing complexity, and maintaining real-time edge processing capabilities. A dedicated spike encoder folds multiple laser repetition periods, transforming phase-based spike trains into density-based spike trains optimized for spiking neural network processing and training via backpropagation through time. As a proof of concept, we introduce \textit{Transporter}, a 128$\times$4 SPAD sensor with a per-pixel D flip-flop ring-based spike encoder, designed for intelligent active time-resolved imaging. This work demonstrates a path toward more efficient, neuromorphic SPAD imaging systems with reduced data overhead and enhanced real-time processing.
Date
Jun 2, 2025 4:30 PM — 7:30 PM
Event
Location
Awaji Yumebutai Int. Conf. Center
Yumebutai 1, Awaji, Hyogo 656-2306
I will present in the flash presentation and poster session. Feel free to discuss with me during the poster session!