نتایج جستجو برای: heart sound classification deep learning neural networks self

تعداد نتایج: 2577770  

Journal: :CoRR 2018
Md. Zahangir Alom Theodore Josue Md Nayim Rahman Will Mitchell Chris Yakopcic Tarek M. Taha

In the last decade, special purpose computing systems, such as Neuromorphic computing, have become very popular in the field of computer vision and machine learning for classification tasks. In 2015, IBM’s released the TrueNorth Neuromorphic system, kick-starting a new era of Neuromorphic computing. Alternatively, Deep Learning approaches such as Deep Convolutional Neural Networks (DCNN) show a...

Despite considerable enhances in recognizing hand gestures from still images, there are still many challenges in the classification of hand gestures in videos. The latter comes with more challenges, including higher computational complexity and arduous task of representing temporal features. Hand movement dynamics, represented by temporal features, have to be extracted by analyzing the total fr...

Journal: :European Journal of Technic 2020

Journal: :IEEE Transactions on Human-Machine Systems 2022

Cardiac disorders are one of the leading causes mortality around globe and early diagnosis heart diseases can be beneficial for its mitigation. In this article, an artificial intelligence (AI) based device has been proposed, which allows automatic real-time cardiac on deep learning techniques. The sound (phonocardiogram) signal is acquired by a customized designed stethoscope processed before a...

Journal: :CoRR 2017
Celia Fernández Madrazo Ignacio Heredia Cacha Lara Lloret Iglesias Jesús Marco de Lucas

The application of deep learning techniques using convolutional neural networks to the classification of particle collisions in High Energy Physics is explored. An intuitive approach to transform physical variables, like momenta of particles and jets, into a single image that captures the relevant information, is proposed. The idea is tested using a well known deep learning framework on a simul...

2014
Andrey Bondarenko Arkady Borisov

Recent theoretical advances in the learning of deep artificial neural networks have made it possible to overcome a vanishing gradient problem. This limitation has been overcome using a pre-training step, where deep belief networks formed by the stacked Restricted Boltzmann Machines perform unsupervised learning. Once a pre-training step is done, network weights are fine-tuned using regular erro...

2016
Soumya Ghosh Francesco Maria Delle Fave Jonathan S. Yedidia

Buoyed by the success of deep multilayer neural networks, there is renewed interest in scalable learning of Bayesian neural networks. Here, we study algorithms that utilize recent advances in Bayesian inference to efficiently learn distributions over network weights. In particular, we focus on recently proposed assumed density filtering based methods for learning Bayesian neural networks – Expe...

2013
ANDREI-PETRU BĂRAR VICTOR-EMIL NEAGOE NICU SEBE

This paper investigates a Deep Learning (DL) approach for image recognition. We have considered two DL neural models: Convolutional Neural Network (CNN) and Deep Belief Network (DBN). We have chosen several architectures for each of the proposed models. We have chosen Caltech101 dataset to train and test the above proposed models; this database is composed by images belonging to 101 widely vari...

2017
Joseph G. Jacobs Gabriel J. Brostow Alex Freeman Daniel C. Alexander Eleftheria Panagiotaki

The benefits of deep neural networks can be hard to realise in medical imaging tasks because training sample sizes are often modest. Pre-training on large data sets and subsequent transfer learning to specific tasks with limited labelled training data has proved a successful strategy in other domains. Here, we implement and test this idea for detecting and classifying nuclei in histology, impor...

نمودار تعداد نتایج جستجو در هر سال

با کلیک روی نمودار نتایج را به سال انتشار فیلتر کنید