In the research of computer vision, a very challenging problem is the detection of small objects. The existing detection algorithms often focus on detecting full-scale objects, without making proprietary optimization for detecting small-size objects. For small objects dense scenes, not only the accuracy is low, but also there is a certain waste of computing resources. An improved detection algorithm was proposed for small objects based on YOLOv5. By reasonably clipping the feature map output of the large object detection layer, the computing resources required by the model were significantly reduced and the model becomes more lightweight. An improved feature fusion method (PB-FPN) for small object detection based on PANet and BiFPN was prop...
Thanks to the recent development in Graphics Processing Unit (GPU) and deep neural network, outstand...
In the field of object detection, recently, tremendous success is achieved, but still it is a very c...
Abstract Aiming at the problem of multi-object detection such as target occlusion and tiny targets i...
In order to alleviate the situation that small objects are prone to missed detection and false detec...
Small object detection is a very challenging task in the field of object detection because it is eas...
As one type of object detection, small object detection has been widely used in daily-life-related a...
Aiming at the low detection accuracy and poor positioning for small objects of single-stage object d...
Due to the increasing presence of small objects in videos or images from practical applications, sma...
As we all know, YOLOv4 can achieve excellent detection performance in object detection and has been ...
With the development of deep convolutional neural networks, the effect of pedestrian detection has b...
In terms of small objects in traffic scenes, general object detection algorithms have low detection ...
Small object detection is an interesting topic in computer vision. With the rapid development in dee...
In unmanned aerial vehicle photographs, object detection algorithms encounter challenges in enhancin...
Small object detection is one of the research difficulties in object detection, and Feature Pyramid ...
Object detection algorithms based on deep learning are widely used in industrial detection.The Retin...
Thanks to the recent development in Graphics Processing Unit (GPU) and deep neural network, outstand...
In the field of object detection, recently, tremendous success is achieved, but still it is a very c...
Abstract Aiming at the problem of multi-object detection such as target occlusion and tiny targets i...
In order to alleviate the situation that small objects are prone to missed detection and false detec...
Small object detection is a very challenging task in the field of object detection because it is eas...
As one type of object detection, small object detection has been widely used in daily-life-related a...
Aiming at the low detection accuracy and poor positioning for small objects of single-stage object d...
Due to the increasing presence of small objects in videos or images from practical applications, sma...
As we all know, YOLOv4 can achieve excellent detection performance in object detection and has been ...
With the development of deep convolutional neural networks, the effect of pedestrian detection has b...
In terms of small objects in traffic scenes, general object detection algorithms have low detection ...
Small object detection is an interesting topic in computer vision. With the rapid development in dee...
In unmanned aerial vehicle photographs, object detection algorithms encounter challenges in enhancin...
Small object detection is one of the research difficulties in object detection, and Feature Pyramid ...
Object detection algorithms based on deep learning are widely used in industrial detection.The Retin...
Thanks to the recent development in Graphics Processing Unit (GPU) and deep neural network, outstand...
In the field of object detection, recently, tremendous success is achieved, but still it is a very c...
Abstract Aiming at the problem of multi-object detection such as target occlusion and tiny targets i...