In today’s scenario, the fastest algorithm which uses a single layer of convolutional network to detect the objects from the image is single shot multi-box detector (SSD) algorithm. This paper studies object detection techniques to detect objects in real time on any device running the proposed model in any environment. In this paper, we have increased the classification accuracy of detecting objects by improving the SSD algorithm while keeping the speed constant. These improvements have been done in their convolutional layers, by using depth-wise separable convolution along with spatial separable convolutions generally called multilayer convolutional neural networks. The proposed method uses these multilayer convolutional neural networks to...
Abstract— The goal of Machine Learning technology in this project, named Ad-Sol (solution for advert...
This master thesis describes a practical implementation of a deep learning framework for object dete...
Object detection in still images has drawn a lot of attention over past few years, and with the adve...
In today’s scenario, the fastest algorithm which uses a single layer of convolutional network to det...
We are trying to Detect, Localize and classify objects in an image using neural networks. We are usi...
We are trying to Detect, Localize and classify objects in an image using neural networks. We are usi...
We present a method for detecting objects in images us-ing a single deep neural network. Our approac...
Deep learning is a relatively new branch of machine learning in which computers are taught to recogn...
Object detection is being widely used in many fields, and therefore, the demand for more accurate an...
Modern object detectors always include two major parts: a feature extractor and a feature classifier...
In order to improve the detection accuracy of objects at different scales, the most recent studies a...
International audienceIn an industrial environment, object detection is a challenging task due to th...
The technique for target detection based on a convolutional neural network has been widely implement...
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 ...
Abstract— The goal of Machine Learning technology in this project, named Ad-Sol (solution for advert...
This master thesis describes a practical implementation of a deep learning framework for object dete...
Object detection in still images has drawn a lot of attention over past few years, and with the adve...
In today’s scenario, the fastest algorithm which uses a single layer of convolutional network to det...
We are trying to Detect, Localize and classify objects in an image using neural networks. We are usi...
We are trying to Detect, Localize and classify objects in an image using neural networks. We are usi...
We present a method for detecting objects in images us-ing a single deep neural network. Our approac...
Deep learning is a relatively new branch of machine learning in which computers are taught to recogn...
Object detection is being widely used in many fields, and therefore, the demand for more accurate an...
Modern object detectors always include two major parts: a feature extractor and a feature classifier...
In order to improve the detection accuracy of objects at different scales, the most recent studies a...
International audienceIn an industrial environment, object detection is a challenging task due to th...
The technique for target detection based on a convolutional neural network has been widely implement...
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 ...
Abstract— The goal of Machine Learning technology in this project, named Ad-Sol (solution for advert...
This master thesis describes a practical implementation of a deep learning framework for object dete...
Object detection in still images has drawn a lot of attention over past few years, and with the adve...