This study details the development of a lightweight and high performance model, targeting real-time object detection. Several designed features were integrated into the proposed framework to accomplish a light weight, rapid execution, and optimal performance in object detection. Foremost, a sparse and lightweight structure was chosen as the network’s backbone, and feature fusion was performed using modified feature pyramid networks. Recent learning strategies in data augmentation, mixed precision training, and network sparsity were incorporated to substantially enhance the generalization for the lightweight model and boost the detection accuracy. Moreover, knowledge distillation was applied to tackle dropping issues, and a student–teacher l...
The performance of conventional surveillance systems is challenged by high error detection rates in ...
For a long time, object detection has been a popular but difficult research problem in the field of ...
Abstract. Convolutional Neural Networks (CNNs) can provide accu-rate object classification. They can...
In recent years, almost all of the current top-performing object detection networks use CNN (convolu...
Object detection is a very challenging problem in computer vision and has been a prominent subject o...
In this study, a fast object detection algorithm based on binary deep convolution neural networks (C...
Object detection is closely related with video and image analysis. Under computer vision technology,...
More and more datasets have increased their size with enough class annotations. Although the classif...
Knowledge Distillation (KD) is a well-known training paradigm in deep neural networks where knowledg...
Object Detection is the task of classification andlocalization of objects in an image or video. It h...
This paper investigates the usage of pre-trained deep learning neural networks for object detection ...
Recent advances in convolutional neural network (CNN)-based object detection have a trade-off betwee...
As the object detection dataset scale is smaller than the image recognition dataset ImageNet scale, ...
Due to the dramatic growth of the amount of video data on the Internet, a need arises for processing...
Object detection, which aims to recognize and locate objects within images using bounding boxes, is ...
The performance of conventional surveillance systems is challenged by high error detection rates in ...
For a long time, object detection has been a popular but difficult research problem in the field of ...
Abstract. Convolutional Neural Networks (CNNs) can provide accu-rate object classification. They can...
In recent years, almost all of the current top-performing object detection networks use CNN (convolu...
Object detection is a very challenging problem in computer vision and has been a prominent subject o...
In this study, a fast object detection algorithm based on binary deep convolution neural networks (C...
Object detection is closely related with video and image analysis. Under computer vision technology,...
More and more datasets have increased their size with enough class annotations. Although the classif...
Knowledge Distillation (KD) is a well-known training paradigm in deep neural networks where knowledg...
Object Detection is the task of classification andlocalization of objects in an image or video. It h...
This paper investigates the usage of pre-trained deep learning neural networks for object detection ...
Recent advances in convolutional neural network (CNN)-based object detection have a trade-off betwee...
As the object detection dataset scale is smaller than the image recognition dataset ImageNet scale, ...
Due to the dramatic growth of the amount of video data on the Internet, a need arises for processing...
Object detection, which aims to recognize and locate objects within images using bounding boxes, is ...
The performance of conventional surveillance systems is challenged by high error detection rates in ...
For a long time, object detection has been a popular but difficult research problem in the field of ...
Abstract. Convolutional Neural Networks (CNNs) can provide accu-rate object classification. They can...