A system to perform video analytics is proposed using a dynamically tuned convolutional network. Videos are fetched from cloud storage, preprocessed, and a model for supporting classification is developed on these video streams using cloud-based infrastructure. A key focus in this paper is on tuning hyper-parameters associated with the deep learning algorithm used to construct the model. We further propose an automatic video object classification pipeline to validate the system. The mathematical model used to support hyper-parameter tuning improves performance of the proposed pipeline, and outcomes of various parameters on system's performance is compared. Subsequently, the parameters that contribute toward the most optimal performance are ...
Powered by deep learning, video analytic applications process millions of camera feeds in real-time ...
In this paper, we study how to design resource allocation algorithms for data analytics services tha...
Object recognition from live video streams comes with numerous challenges such as the variation in i...
A system to perform video analytics is proposed using a dynamically tuned convolutional network. Vid...
A system to perform video analytics is proposed using a dynamically tuned convolutional network. Vid...
A system to perform video analytics is proposed using a dynamically tuned convolutional network. Vid...
Object classification is a vital part of any video analytics system, which could aid in complex appl...
Object classification is a vital part of any video analytics system, which could aid in complex appl...
Deep learning (DL) has shown promising results on complex computer vision tasks for video stream ana...
Object detection and classification are the basic tasks in video analytics and become the starting p...
Object detection and classification are the basic tasks in video analytics and become the starting p...
Due to the recent advances in cameras, cell phones and camcorders, particularly the resolution at wh...
Video analytics framework detection performance is worked at cloud. Object detection and classificat...
Due to the recent advances in cameras, cell phones and camcorders, particularly the resolution at wh...
Powered by deep learning, video analytic applications process millions of camera feeds in real-time ...
In this paper, we study how to design resource allocation algorithms for data analytics services tha...
Object recognition from live video streams comes with numerous challenges such as the variation in i...
A system to perform video analytics is proposed using a dynamically tuned convolutional network. Vid...
A system to perform video analytics is proposed using a dynamically tuned convolutional network. Vid...
A system to perform video analytics is proposed using a dynamically tuned convolutional network. Vid...
Object classification is a vital part of any video analytics system, which could aid in complex appl...
Object classification is a vital part of any video analytics system, which could aid in complex appl...
Deep learning (DL) has shown promising results on complex computer vision tasks for video stream ana...
Object detection and classification are the basic tasks in video analytics and become the starting p...
Object detection and classification are the basic tasks in video analytics and become the starting p...
Due to the recent advances in cameras, cell phones and camcorders, particularly the resolution at wh...
Video analytics framework detection performance is worked at cloud. Object detection and classificat...
Due to the recent advances in cameras, cell phones and camcorders, particularly the resolution at wh...
Powered by deep learning, video analytic applications process millions of camera feeds in real-time ...
In this paper, we study how to design resource allocation algorithms for data analytics services tha...
Object recognition from live video streams comes with numerous challenges such as the variation in i...