Advances in moving object detection have been driven by the active application of deep learning methods. However, many existing models render superior detection accuracy at the cost of high computational complexity and slow inference speed. This fact has hindered the development of such models in mobile and embedded vision tasks, which need to be carried out in a timely fashion on a computationally limited platform. In this paper, we propose a super-fast (inference speed-154 fps) and lightweight (model size-1.45 MB) end-to-end 3D separable convolutional neural network with a multi-input multi-output (MIMO) strategy named “3DS_MM” for moving object detection. To improve detection accuracy, the proposed model adopts 3D co...
In this study, a fast object detection algorithm based on binary deep convolution neural networks (C...
This paper is to present an efficient and fast deep learning algorithm based on neural networks for ...
The last few years have brought advances in computer vision at an amazing pace, grounded on new find...
Moving object detection (MOD) is the process of extracting dynamic foreground content from the video...
The object detection problem is composed of two main tasks, object localization and object classifi...
The Internet of Things (IoT), with smart sensors, collects and generates big data streams for a wide...
In today’s scenario, the fastest algorithm which uses a single layer of convolutional network to det...
Given the problem of detecting objects in video, existing neural-network solutions rely on a post-pr...
This paper proposes a computationally efficient approach to detecting objects natively in 3D point c...
International audienceIn an industrial environment, object detection is a challenging task due to th...
In recent years there is rapid improvement in Object detection in areas of video analysis and image ...
Deep learning is a relatively new branch of machine learning in which computers are taught to recogn...
Object detection in wide area motion imagery (WAMI) has drawn the attention of the computer vision r...
Despite being a core topic for more than several decades, object detection is still receiving increa...
Three-dimensional convolutional neural networks (3D CNNs) have been explored to learn spatio-tempora...
In this study, a fast object detection algorithm based on binary deep convolution neural networks (C...
This paper is to present an efficient and fast deep learning algorithm based on neural networks for ...
The last few years have brought advances in computer vision at an amazing pace, grounded on new find...
Moving object detection (MOD) is the process of extracting dynamic foreground content from the video...
The object detection problem is composed of two main tasks, object localization and object classifi...
The Internet of Things (IoT), with smart sensors, collects and generates big data streams for a wide...
In today’s scenario, the fastest algorithm which uses a single layer of convolutional network to det...
Given the problem of detecting objects in video, existing neural-network solutions rely on a post-pr...
This paper proposes a computationally efficient approach to detecting objects natively in 3D point c...
International audienceIn an industrial environment, object detection is a challenging task due to th...
In recent years there is rapid improvement in Object detection in areas of video analysis and image ...
Deep learning is a relatively new branch of machine learning in which computers are taught to recogn...
Object detection in wide area motion imagery (WAMI) has drawn the attention of the computer vision r...
Despite being a core topic for more than several decades, object detection is still receiving increa...
Three-dimensional convolutional neural networks (3D CNNs) have been explored to learn spatio-tempora...
In this study, a fast object detection algorithm based on binary deep convolution neural networks (C...
This paper is to present an efficient and fast deep learning algorithm based on neural networks for ...
The last few years have brought advances in computer vision at an amazing pace, grounded on new find...