Robust and reliable diagnostic methods are desired in various types of industries. This article presents a novel approach to object detection in industrial or general ultrasound tomography. The key idea is to analyze the time-dependent ultrasonic signal recorded by three independent transducers of an experimental system. It focuses on finding common or related characteristics of these signals using custom-designed deep neural network models. In principle, models use convolution layers to extract common features of signals, which are passed to dense layers responsible for predicting the number of objects or their locations and sizes. Predicting the number and properties of objects are characterized by a high value of the coefficient of deter...
Clinical procedures, which require a large number of personnel and medical resources, receive the ma...
This paper presents a deep learning network that performs automatic detection of defects by inspecti...
Ultrasonic signal classification in nondestructive testing is of great significance for the detectio...
Introduction. The development of machine learning methods has given a new impulse to solving inverse...
Medical ultrasound imaging relies heavily on high-quality signal processing to provide reliable and ...
Conventional image reconstruction of advanced composite materials using ultrasound tomography is com...
Machine learning and neural networks are successfully applied in various regression and classificati...
The goal of this paper is to show the possibilities of state-of-the-art deep learning methods for ul...
Abstract—In recent years, many alternative methodologies and techniques have been proposed to perfor...
Ultrasound speed-of-sound reconstruction has been proven to provide images of higher quality in some...
Ultrasonic sensors are commonly used in automobiles to assist driving maneuvers, e.g., parking, beca...
Nowadays, applications of ultrasonic proximity sensors are limited to a post-processing of the acqui...
Ultrazvučno testiranje jedna je od najzastupljenijih nedestruktivnih metoda ispitivanja materijala u...
Simulations of ultrasound tomography demonstrated that artificial neural networks can solve the inve...
This paper describes the method developed using the Extreme Gradient Boosting (Xgboost) algorithm th...
Clinical procedures, which require a large number of personnel and medical resources, receive the ma...
This paper presents a deep learning network that performs automatic detection of defects by inspecti...
Ultrasonic signal classification in nondestructive testing is of great significance for the detectio...
Introduction. The development of machine learning methods has given a new impulse to solving inverse...
Medical ultrasound imaging relies heavily on high-quality signal processing to provide reliable and ...
Conventional image reconstruction of advanced composite materials using ultrasound tomography is com...
Machine learning and neural networks are successfully applied in various regression and classificati...
The goal of this paper is to show the possibilities of state-of-the-art deep learning methods for ul...
Abstract—In recent years, many alternative methodologies and techniques have been proposed to perfor...
Ultrasound speed-of-sound reconstruction has been proven to provide images of higher quality in some...
Ultrasonic sensors are commonly used in automobiles to assist driving maneuvers, e.g., parking, beca...
Nowadays, applications of ultrasonic proximity sensors are limited to a post-processing of the acqui...
Ultrazvučno testiranje jedna je od najzastupljenijih nedestruktivnih metoda ispitivanja materijala u...
Simulations of ultrasound tomography demonstrated that artificial neural networks can solve the inve...
This paper describes the method developed using the Extreme Gradient Boosting (Xgboost) algorithm th...
Clinical procedures, which require a large number of personnel and medical resources, receive the ma...
This paper presents a deep learning network that performs automatic detection of defects by inspecti...
Ultrasonic signal classification in nondestructive testing is of great significance for the detectio...