Smart Pixels: In-pixel AI for on-sensor data filtering
Benjamin Parpillon (1, 2), Chinar Syal (1), Jieun Yoo (2), Jennet, Dickinson (1), Morris Swartz (3), Giuseppe Di Guglielmo (1, 4), Alice Bean, (5), Douglas Berry (1), Manuel Blanco Valentin (4), Karri DiPetrillo (6),, Anthony Badea (6), Lindsey Gray (2), Petar Maksimovic (3)

TL;DR
This paper introduces a CMOS 28 nm prototype of a smart pixel with embedded AI for real-time data filtering at the LHC, demonstrating efficient momentum classification and significant data rejection capabilities.
Contribution
It presents the design and implementation of an in-pixel neural network integrated into a CMOS readout circuit for high-speed particle data filtering.
Findings
Neural network achieves 54.4% - 75.4% data rejection.
Power consumption per pixel is approximately 6 μW.
The system operates within the power constraints of the experimental setup.
Abstract
We present a smart pixel prototype readout integrated circuit (ROIC) designed in CMOS 28 nm bulk process, with in-pixel implementation of an artificial intelligence (AI) / machine learning (ML) based data filtering algorithm designed as proof-of-principle for a Phase III upgrade at the Large Hadron Collider (LHC) pixel detector. The first version of the ROIC consists of two matrices of 256 smart pixels, each 2525 m in size. Each pixel consists of a charge-sensitive preamplifier with leakage current compensation and three auto-zero comparators for a 2-bit flash-type ADC. The frontend is capable of synchronously digitizing the sensor charge within 25 ns. Measurement results show an equivalent noise charge (ENC) of 30e and a total dispersion of 100e The second version of the ROIC uses a fully connected two-layer neural network (NN) to process…
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