Goto

Collaborating Authors

 nvidia jetson tx2


Low-Latency Neural Inference on an Edge Device for Real-Time Handwriting Recognition from EEG Signals

arXiv.org Artificial Intelligence

Brain-computer interfaces (BCIs) offer a pathway to restore communication for individuals with severe motor or speech impairments. Imagined handwriting provides an intuitive paradigm for character-level neural decoding, bridging the gap between human intention and digital communication. While invasive approaches such as electrocorticography (ECoG) achieve high accuracy, their surgical risks limit widespread adoption. Non-invasive electroencephalography (EEG) offers safer and more scalable alternatives but suffers from low signal-to-noise ratio and spatial resolution, constraining its decoding precision. This work demonstrates that advanced machine learning combined with informative EEG feature extraction can overcome these barriers, enabling real-time, high-accuracy neural decoding on portable edge devices. A 32-channel EEG dataset was collected from fifteen participants performing imagined handwriting. Signals were preprocessed with bandpass filtering and artifact subspace reconstruction, followed by extraction of 85 time-, frequency-, and graphical-domain features. A hybrid architecture, EEdGeNet, integrates a Temporal Convolutional Network with a multilayer perceptron trained on the extracted features. When deployed on an NVIDIA Jetson TX2, the system achieved 89.83 percent accuracy with 914.18 ms per-character latency. Selecting only ten key features reduced latency by 4.5 times to 202.6 ms with less than 1 percent loss in accuracy. These results establish a pathway for accurate, low-latency, and fully portable non-invasive BCIs supporting real-time communication.


NVIDIAVoice: Drones Enabling Faster Responses To Disaster Victims

Forbes - Tech

With the rise of the autonomous machine revolution, there has been an acceleration in the development and deployment of robotics across a broad range of industries. This includes fields such as emergency response where each minute is critical as victims must wait for help or supplies to arrive. Yet high-tech drones could decrease that waiting time significantly. SURVICE Engineering company is contributing to these efforts by producing droids that are capable of speedily delivering medical supplies and supporting the Department of Defense.


The NVIDIA Jetson TX2 (Pascal) Tech Report

#artificialintelligence

NVIDIA just announced the Jetson TX2 embedded AI supercomputer, based on the latest NVIDIA Pascal microarchitecture. It promises to offer twice the performance of the previous-generation Jetson TX1, in the same package. In this tech report, we will share with you the full details of the new Pascal-based NVIDIA Jetson TX2! Artificial intelligence is the new frontier in GPU compute technology. Whether they are used to power training or inference engines, AI research has benefited greatly from the massive amounts of compute power in modern GPUs. The market is led by NVIDIA with their Tesla accelerators that run on their proprietary CUDA platform.