This study proposes a multiheaded object detection algorithm referred to as MANet. The main purpose of the study is to integrate feature layers of different scales based on the attention mechanism and to enhance contextual connections. To achieve this, we first replaced the feed-forward base network of the single-shot detector with the ResNet−101 (inspired by the Deconvolutional Single-Shot Detector) and then applied linear interpolation and the attention mechanism. The information of the feature layers at different scales was fused to improve the accuracy of target detection. The primary contributions of this study are the propositions of (a) a fusion attention mechanism, and (b) a multiheaded attention fusion method. Our final MANet...
In today’s scenario, the fastest algorithm which uses a single layer of convolutional network to det...
The use of LiDAR point clouds for accurate three-dimensional perception is crucial for realizing hig...
In the field of studying scale variation, the Feature Pyramid Network (FPN) replaces the image pyram...
Pursuing an object detector with good detection accuracy while ensuring detection speed has always b...
Recently, it has been demonstrated that the performance of an object detection network can be improv...
Three-dimensional object detection in the point cloud can provide more accurate object data for auto...
Aiming at the low detection accuracy and poor positioning for small objects of single-stage object d...
This thesis develops a trainable object-recognition algorithm. This algorithm represents objects usi...
In recent years, almost all of the current top-performing object detection networks use CNN (convolu...
With the development of deep learning, researches in the field of computer vision are attracting mor...
The thesis presents an algorithm for object detection based on a computational model of visual atten...
Abstract Object detection is an important component of computer vision. Most of the recent successfu...
This thesis develops a trainable object-recognition algorithm. This algorithm represents objects usi...
The objects in remote sensing images have large-scale variations, arbitrary directions, and are usua...
As the object detection dataset scale is smaller than the image recognition dataset ImageNet scale, ...
In today’s scenario, the fastest algorithm which uses a single layer of convolutional network to det...
The use of LiDAR point clouds for accurate three-dimensional perception is crucial for realizing hig...
In the field of studying scale variation, the Feature Pyramid Network (FPN) replaces the image pyram...
Pursuing an object detector with good detection accuracy while ensuring detection speed has always b...
Recently, it has been demonstrated that the performance of an object detection network can be improv...
Three-dimensional object detection in the point cloud can provide more accurate object data for auto...
Aiming at the low detection accuracy and poor positioning for small objects of single-stage object d...
This thesis develops a trainable object-recognition algorithm. This algorithm represents objects usi...
In recent years, almost all of the current top-performing object detection networks use CNN (convolu...
With the development of deep learning, researches in the field of computer vision are attracting mor...
The thesis presents an algorithm for object detection based on a computational model of visual atten...
Abstract Object detection is an important component of computer vision. Most of the recent successfu...
This thesis develops a trainable object-recognition algorithm. This algorithm represents objects usi...
The objects in remote sensing images have large-scale variations, arbitrary directions, and are usua...
As the object detection dataset scale is smaller than the image recognition dataset ImageNet scale, ...
In today’s scenario, the fastest algorithm which uses a single layer of convolutional network to det...
The use of LiDAR point clouds for accurate three-dimensional perception is crucial for realizing hig...
In the field of studying scale variation, the Feature Pyramid Network (FPN) replaces the image pyram...