Small object detection is a very challenging task in the field of object detection because it is easily affected by large object occlusion and small object itself has relatively little feature information. Aiming at the problem that the YOLOv3 network does not consider the context semantic relationship of small object detection, the detection accuracy of small objects is not high. In this paper, we propose a small object detection network combining multi-level fusion and feature augmentation. First, the feature enhancement module is introduced into the deep layer of the backbone extraction network to enhance the feature information of small objects in the feature map. Second, a multi-level feature fusion module is proposed to better capture...
The advancement in artificial intelligence and computer vision facilitates object detection for comp...
Small object detection is one of the most challenging problems in computer vision. Algorithms based ...
Aiming at the low detection accuracy and poor positioning for small objects of single-stage object d...
In the research of computer vision, a very challenging problem is the detection of small objects. Th...
With the rise of deep convolutional neural networks, object detection has achieved prominent advance...
The "You only look once v4"(YOLOv4) is one type of object detection methods in deep learning. YOLOv4...
In recent years, there has been significant interest in deep machine learning, due to its flexibilit...
Small object detection is an interesting topic in computer vision. With the rapid development in dee...
As one type of object detection, small object detection has been widely used in daily-life-related a...
In order to alleviate the situation that small objects are prone to missed detection and false detec...
Many object detection models struggle with several problematic aspects of small object detection inc...
In recent years, object detection algorithm based on deep learning has made great progress, but the ...
As we all know, YOLOv4 can achieve excellent detection performance in object detection and has been ...
In this article we propose an effective algorithm for small object detection in high resolution imag...
International audienceObject detection from aerial and satellite remote sensing images has been an a...
The advancement in artificial intelligence and computer vision facilitates object detection for comp...
Small object detection is one of the most challenging problems in computer vision. Algorithms based ...
Aiming at the low detection accuracy and poor positioning for small objects of single-stage object d...
In the research of computer vision, a very challenging problem is the detection of small objects. Th...
With the rise of deep convolutional neural networks, object detection has achieved prominent advance...
The "You only look once v4"(YOLOv4) is one type of object detection methods in deep learning. YOLOv4...
In recent years, there has been significant interest in deep machine learning, due to its flexibilit...
Small object detection is an interesting topic in computer vision. With the rapid development in dee...
As one type of object detection, small object detection has been widely used in daily-life-related a...
In order to alleviate the situation that small objects are prone to missed detection and false detec...
Many object detection models struggle with several problematic aspects of small object detection inc...
In recent years, object detection algorithm based on deep learning has made great progress, but the ...
As we all know, YOLOv4 can achieve excellent detection performance in object detection and has been ...
In this article we propose an effective algorithm for small object detection in high resolution imag...
International audienceObject detection from aerial and satellite remote sensing images has been an a...
The advancement in artificial intelligence and computer vision facilitates object detection for comp...
Small object detection is one of the most challenging problems in computer vision. Algorithms based ...
Aiming at the low detection accuracy and poor positioning for small objects of single-stage object d...