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Single Pixel Image Classification using an Ultrafast Digital Light Projector

arXiv:2603.12036v17.3h-index: 20
Predicted impact top 94% in CV · last 90 daysOriginality Incremental advance
AI Analysis

This enables ultrafast anomaly detection for applications like autonomous vehicles, though it is incremental as it builds on existing single pixel imaging techniques.

The authors tackled real-time image classification by combining single pixel imaging with low-complexity machine learning models, achieving multi-kHz frame rates without image reconstruction, with classification accuracy tested on MNIST digits.

Pattern recognition and image classification are essential tasks in machine vision. Autonomous vehicles, for example, require being able to collect the complex information contained in a changing environment and classify it in real time. Here, we experimentally demonstrate image classification at multi-kHz frame rates combining the technique of single pixel imaging (SPI) with a low complexity machine learning model. The use of a microLED-on-CMOS digital light projector for SPI enables ultrafast pattern generation for sub-ms image encoding. We investigate the classification accuracy of our experimental system against the broadly accepted benchmarking task of the MNIST digits classification. We compare the classification performance of two machine learning models: An extreme learning machine (ELM) and a backpropagation trained deep neural network. The complexity of both models is kept low so the overhead added to the inference time is comparable to the image generation time. Crucially, our single pixel image classification approach is based on a spatiotemporal transformation of the information, entirely bypassing the need for image reconstruction. By exploring the performance of our SPI based ELM as binary classifier we demonstrate its potential for efficient anomaly detection in ultrafast imaging scenarios.

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