Biomedical applications often require classifiers that are both accurate and cheap to implement. Today, deep neural networks achieve the state-of-the-art accuracy in most learning tasks that involve large data sets of unstructured data. However, the application of deep learning techniques may not be beneficial in problems with limited training sets and computational resources, or under domain-specific test time constraints. Among other algorithms, ensembles of decision trees, particularly the gradient boosted models have recently been very successful in machine learning competitions. Here, we propose an efficient hardware architecture to implement gradient boosted trees in applications under stringent power, area, and delay constraints, suc...
In the context of epilepsy monitoring, EEG artifacts are often mistaken for seizures due to their mo...
During the past two decades, epileptic seizure detection and prediction algorithms have evolved rapi...
The advent of dedicated Deep Learning (DL) accelerators and neuromorphic processors has brought on n...
Biomedical applications often require classifiers that are both accurate and cheap to implement. Tod...
Efficient on-chip learning is becoming an essential element of implantable biomedical devices. Despi...
Classifiers that can be implemented on chip with minimal computational and memory resources are esse...
A 41.2 nJ/class, 32-channel, patient-specific onchip classification architecture for epileptic seizu...
Modern deep learning schemes have shown human-level performance in the area of medical science. Howe...
Extracting information from dense multi-channel neural sensors for accurate diagnosis of brain disor...
Closed-loop neural interfaces with on-chip machine learning can detect and suppress disease symptoms...
University of Minnesota Ph.D. dissertation. July 2012. Major: Electrical Engineering. Advisor: Kesha...
This work explores the potential utility of neural network classifiers for real- time classification...
Ultra-low power operation and extreme energy efficiency are strong requirements for a number of high...
Ultra-low power operation and extreme energy efficiency are strong requirements for a number of high...
Robust, power- and area-efficient spike classifier, capable of accurate identification of the neural...
In the context of epilepsy monitoring, EEG artifacts are often mistaken for seizures due to their mo...
During the past two decades, epileptic seizure detection and prediction algorithms have evolved rapi...
The advent of dedicated Deep Learning (DL) accelerators and neuromorphic processors has brought on n...
Biomedical applications often require classifiers that are both accurate and cheap to implement. Tod...
Efficient on-chip learning is becoming an essential element of implantable biomedical devices. Despi...
Classifiers that can be implemented on chip with minimal computational and memory resources are esse...
A 41.2 nJ/class, 32-channel, patient-specific onchip classification architecture for epileptic seizu...
Modern deep learning schemes have shown human-level performance in the area of medical science. Howe...
Extracting information from dense multi-channel neural sensors for accurate diagnosis of brain disor...
Closed-loop neural interfaces with on-chip machine learning can detect and suppress disease symptoms...
University of Minnesota Ph.D. dissertation. July 2012. Major: Electrical Engineering. Advisor: Kesha...
This work explores the potential utility of neural network classifiers for real- time classification...
Ultra-low power operation and extreme energy efficiency are strong requirements for a number of high...
Ultra-low power operation and extreme energy efficiency are strong requirements for a number of high...
Robust, power- and area-efficient spike classifier, capable of accurate identification of the neural...
In the context of epilepsy monitoring, EEG artifacts are often mistaken for seizures due to their mo...
During the past two decades, epileptic seizure detection and prediction algorithms have evolved rapi...
The advent of dedicated Deep Learning (DL) accelerators and neuromorphic processors has brought on n...