Single Pixel Image Classification using an Ultrafast Digital Light Projector
arXiv cs.CV / 3/13/2026
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Key Points
- The paper demonstrates image classification at multi-kHz frame rates by combining single-pixel imaging with a microLED-on-CMOS digital light projector for ultrafast pattern generation and sub-ms encoding.
- It compares two lightweight ML models (an extreme learning machine and a backpropagation-trained deep neural network) to keep inference time on par with image generation.
- The approach bypasses traditional image reconstruction by using a spatiotemporal transformation, enabling direct classification and highlighting potential for efficient anomaly detection in ultrafast imaging.
- They benchmark on MNIST and discuss implications for real-time applications in autonomous or ultrafast sensing scenarios.
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