Redirigiendo al acceso original de articulo en 15 segundos...
ARTÍCULO
TITULO

Fast Object Detection in Light Field Imaging by Integrating Deep Learning with Defocusing

Mingjun Ren    
Runxing Liu    
Haibo Hong    
Jieji Ren and Gaobo Xiao    

Resumen

Although four-dimensional (4D) light field imaging has many advantages over traditional two-dimensional (2D) imaging, its high computation cost often hinders the application of this technique in many fields, such as object detection and tracking. This paper presents a hybrid method to accelerate the object detection in light field imaging by integrating the deep learning with the depth estimation algorithm. The method takes full advantage of computation imaging of the light field to generate an all-in-focus image, a series of focal stacks, and multi-view images at the same time, and convolutional neural network and defocusing are consequently used to perform initial detection of the objects in three-dimensional (3D) space. The estimated depths of the detected objects are further optimized based on multi-baseline super-resolution stereo matching while efficiency is maintained, as well by compressing the searching space of the disparity. Experimental studies are conducted to demonstrate the effectiveness of the proposed method.

 Artículos similares

       
 
Tianlei Wang, Fei Ding and Zhenxing Sun    
Human intelligence has the advantage for making high-level decisions in the remote control of underwater vehicles, while autonomous control is superior for accurate and fast close-range pose adjustment. Combining the advantages of both remote and autonom... ver más

 
Wenbo Zhou, Bin Li and Guoling Luo    
Low-visibility maritime image enhancement is essential for maritime surveillance in extreme weathers. However, traditional methods merely optimize contrast while ignoring image features and color recovery, which leads to subpar enhancement outcomes. The ... ver más

 
Xinzhi Liu, Jun Yu, Toru Kurihara, Congzhong Wu, Zhao Niu and Shu Zhan    
It seems difficult to recognize an object from its background with similar color using conventional segmentation methods. An efficient way is to utilize hyperspectral images that contain more wave bands and richer information than only RGB components. Pa... ver más
Revista: Applied Sciences

 
Tian Xie, Weiping Ding, Jinbao Zhang, Xusen Wan and Jiehua Wang    
The discipline of automatic image captioning represents an integration of two pivotal branches of artificial intelligence, namely computer vision (CV) and natural language processing (NLP). The principal functionality of this technology lies in transmuti... ver más
Revista: Applied Sciences

 
Youngki Park and Youhyun Shin    
In this paper, we introduce an efficient approach to multi-label image classification that is particularly suited for scenarios requiring rapid adaptation to new classes with minimal training data. Unlike conventional methods that rely solely on neural n... ver más
Revista: Applied Sciences