Redirigiendo al acceso original de articulo en 18 segundos...
ARTÍCULO
TITULO

Investigation of convolutional neural networks for object detection in aerospace images

Vladimir Skripachev    
Mikhail Guida    
Nikolay Guida    
Alexander Zhukov    

Resumen

The article discusses current algorithms for solving problems of object recognition in images, their main features and advantages. A brief analysis of existing models of working with images based on convolutional neural networks is carried out. A brief overview of the features of convolutional neural network architectures, quantitative indicators for assessing the quality of their functioning and the types of tasks to be solved, the main features of working with images and the main emerging difficulties are considered, the features of processing aerospace images are highlighted. The problem of object recognition in aerospace images is formulated by adapting existing relevant algorithms and their combinations. The main problems of processing aerospace images and approaches to their solution, the application of established methods of object recognition in conventional images to the problems of object recognition in aerospace images are shown. The analysis of various neural network architectures in the prism of solving object recognition problems in aerospace images is carried out. Conclusions are drawn regarding the most successful combinations of various algorithms in the structure of neural networks when recognizing objects in aerospace images. The main factors that make it difficult to recognize objects in aerospace images and the directions of work to reduce their impact on the accuracy of neural networks when recognizing objects in aerospace images are determined.

 Artículos similares

       
 
Muhammad Asad Arshed, Shahzad Mumtaz, Muhammad Ibrahim, Saeed Ahmed, Muhammad Tahir and Muhammad Shafi    
Skin cancer, particularly melanoma, has been recognized as one of the most lethal forms of cancer. Detecting and diagnosing skin lesions accurately can be challenging due to the striking similarities between the various types of skin lesions, such as mel... ver más
Revista: Information

 
Marco Mastrofini, Ivan Agostinelli and Fabio Curti    
The present work focuses on the investigation of an artificial intelligence (AI) algorithm for brightest objects segmentation in night sky images? field of view (FOV). This task is mandatory for many applications that want to focus on the brightest objec... ver más
Revista: Applied Sciences

 
Hongmei Zhang and Shuiqing Wang    
The analysis of thin sections for lithology identification is a staple technique in geology. Although recent strides in deep learning have catalyzed the development of models for thin section recognition leveraging varied deep neural networks, there rema... ver más
Revista: Applied Sciences

 
Vladimir Skripachev,Mikhail Guida,Nikolay Guida,Alexander Zhukov     Pág. 54 - 64
The article discusses current algorithms for solving problems of object recognition in images, their main features and advantages. A brief analysis of existing models of working with images based on convolutional neural networks is carried out. A brief o... ver más

 
Wilfried Wöber, Lars Mehnen, Manuel Curto, Papius Dias Tibihika, Genanaw Tesfaye and Harald Meimberg    
The biological investigation of a population?s shape diversity using digital images is typically reliant on geometrical morphometrics, which is an approach based on user-defined landmarks. In contrast to this traditional approach, the progress in deep le... ver más
Revista: Applied Sciences