Sixteen-day hatching eggs are divided into fertile eggs, waste eggs, and recovered eggs. Because different categoriesmayhave the same characteristics, they are difficult to classify. Fewexisting algorithms can successfully solve this problem. To this end, we propose an end-to-end deep learning network structure that uses multiple forms of signals. First, we collect the photoplethysmography (PPG) signal of the hatching eggs to obtain heartbeat information and photograph hatching eggs with a camera to obtain blood vessel pictures. Second, we use two different network structures to process the two kinds of signals: Temporal convolutional networks are used to process heartbeat information, and convolutional neural networks (CNNs) are used to pr...
Each year, approximately 400 million people are infected with an arboviral disease from the bite of ...
This article aims to test FOS (first-order statistical) in extracting features of embryonated eggs. ...
In order to identify and control the menace of destructive pests via microscopic image-based identif...
In order to realize the fertility detection and classification of hatching eggs, a method based on d...
In order to realize the fertility detection and classification of hatching eggs, a method based on d...
In order to achieve the goal of detecting the fertility of hatching eggs which are divided into fert...
In order to achieve the goal of detecting the fertility of hatching eggs which are divided into fert...
In order to achieve the goal of detecting the fertility of hatching eggs which are divided into fert...
© 2020 SPIE and IS & T. Deep convolutional neural networks show a good prospect in the fertility det...
This study investigates the implementation of deep learning (DL) approaches to the fertile egg-recog...
This study explores the application of CNN-Transfer Learning for nondestructive chicken egg fertilit...
This study explores the application of CNN-Transfer Learning for nondestructive chicken egg fertilit...
This study explored the application of CNN-Transfer Learning for nondestructive chicken egg fertilit...
It is essential to classify dead embryos and live embryos accurately in developing a successful vacc...
Fertility detection of hatching eggs is crucial in the manufacturing of vaccines. For hatching egg i...
Each year, approximately 400 million people are infected with an arboviral disease from the bite of ...
This article aims to test FOS (first-order statistical) in extracting features of embryonated eggs. ...
In order to identify and control the menace of destructive pests via microscopic image-based identif...
In order to realize the fertility detection and classification of hatching eggs, a method based on d...
In order to realize the fertility detection and classification of hatching eggs, a method based on d...
In order to achieve the goal of detecting the fertility of hatching eggs which are divided into fert...
In order to achieve the goal of detecting the fertility of hatching eggs which are divided into fert...
In order to achieve the goal of detecting the fertility of hatching eggs which are divided into fert...
© 2020 SPIE and IS & T. Deep convolutional neural networks show a good prospect in the fertility det...
This study investigates the implementation of deep learning (DL) approaches to the fertile egg-recog...
This study explores the application of CNN-Transfer Learning for nondestructive chicken egg fertilit...
This study explores the application of CNN-Transfer Learning for nondestructive chicken egg fertilit...
This study explored the application of CNN-Transfer Learning for nondestructive chicken egg fertilit...
It is essential to classify dead embryos and live embryos accurately in developing a successful vacc...
Fertility detection of hatching eggs is crucial in the manufacturing of vaccines. For hatching egg i...
Each year, approximately 400 million people are infected with an arboviral disease from the bite of ...
This article aims to test FOS (first-order statistical) in extracting features of embryonated eggs. ...
In order to identify and control the menace of destructive pests via microscopic image-based identif...