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Resource-efficient photonic networks for next-generation AI computing
Published 2025-01-01Get full text
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Binarized Neural Networks for Resource-Efficient Spike Sorting
Published 2025-01-01Get full text
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Real-time and resource-efficient banana bunch detection and localization with YOLO-BRFB on edge devices
Published 2025-08-01Get full text
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Wi-Filter: WiFi-Assisted Frame Filtering on the Edge for Scalable and Resource-Efficient Video Analytics
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Resource-Efficient Personalization in Federated Learning With Closed-Form Classifiers
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Resource efficient Internet-of-Things intrusion detection with spiking neural networks
Published 2024-11-01Get full text
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Technologies for Resource-Efficient Recycling of End-of-Life Crystalline Silicon Photovoltaic Panels
Published 2025-06-01Get full text
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Efficient Video Compression Using Afterimage Representation
Published 2024-11-01Subjects: Get full text
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Resource-Efficient Design and Implementation of Real-Time Parking Monitoring System with Edge Device
Published 2025-03-01Get full text
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A Latency-Aware and Resource-Efficient Content Caching Scheme for Content-Centric Networks
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Resource Efficient Federated LoRaWAN Architecture for Far-Edge IoT Applications
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A Resource-Efficient Edwards25519 Point Multiplication Technique for Resource-Constrained Devices
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BiCrossNet: resource-efficient cross-view geolocalization with binary neural networks
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A Resource-Efficient Multi-Entropy Fusion Method and Its Application for EEG-Based Emotion Recognition
Published 2025-01-01“…Emotion recognition is an advanced technology for understanding human behavior and psychological states, with extensive applications for mental health monitoring, human–computer interaction, and affective computing. Based on electroencephalography (EEG), the biomedical signals naturally generated by the brain, this work proposes a resource-efficient multi-entropy fusion method for classifying emotional states. …”
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