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What is Mini-Batch

Examining the Impact of Deep Learning and IoT on Multi-Industry Applications
It is the number of samples used to train a model in each iteration.
Published in Chapter:
Deep Learning for Moving Object Detection and Tracking
Kalirajan K. (KPR Institute of Engineering and Technology, India), Seethalakshmi V. (KPR Institute of Engineering and Technology, India), Venugopal D. (KPR Institute of Engineering and Technology, India), and Balaji K. (SNS College of Engineering, India)
DOI: 10.4018/978-1-7998-7511-6.ch009
Abstract
Moving object detection and tracking is the process of identifying and locating the class objects such as people, vehicle, toy, and human faces in the video sequences more precisely without background disturbances. It is the first and foremost step in any kind of video analytics applications, and it is greatly influencing the high-level abstractions such as classification and tracking. Traditional methods are easily affected by the background disturbances and achieve poor results. With the advent of deep learning, it is possible to improve the results with high level features. The deep learning model helps to get more useful insights about the events in the real world. This chapter introduces the deep convolutional neural network and reviews the deep learning models used for moving object detection. This chapter also discusses the parameters involved and metrics used to assess the performance of moving object detection in deep learning model. Finally, the chapter is concluded with possible recommendations for the benefit of research community.
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