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Image-free classification of fast-moving objects using “learned” structured illumination and single-pixel detection

Zibang Zhang, Xiang Li, Shujun Zheng, Manhong Yao, Guoan Zheng, Jingang Zhong

2020Optics Express94 citationsDOIOpen Access PDF

Abstract

Object classification generally relies on image acquisition and subsequent analysis. Real-time classification of fast-moving objects is a challenging task. Here we propose an approach for real-time classification of fast-moving objects without image acquisition. The key to the approach is to use structured illumination and single-pixel detection to acquire the object features directly. A convolutional neural network (CNN) is trained to learn the object features. The "learned" object features are then used as structured patterns for structured illumination. Object classification can be achieved by picking up the resulting light signals by a single-pixel detector and feeding the single-pixel measurements to the trained CNN. In our experiments, we show that accurate and real-time classification of fast-moving objects can be achieved. Potential applications of the proposed approach include rapid classification of flowing cells, assembly-line inspection, and aircraft classification in defense applications. Benefiting from the use of a single-pixel detector, the approach might be applicable for hidden moving object classification.

Topics & Concepts

Artificial intelligenceComputer scienceObject (grammar)Object detectionConvolutional neural networkComputer visionPattern recognition (psychology)Contextual image classificationDetectorCognitive neuroscience of visual object recognitionArtificial neural networkFeature extractionKey (lock)Image processingImage (mathematics)One-class classificationStatistical classification3D single-object recognitionStructured lightDeep learningAdvanced Neural Network ApplicationsAdvanced Optical Sensing TechnologiesInfrared Target Detection Methodologies