IODTDLCNN: Implementation of Object Detection and Tracking by using Deep Learning based Convolutional Neural Network

Molagavalli Jhansi, S. Bachu, N. U. Kumar, M. A. Kumar
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引用次数: 1

Abstract

Video object detection plays the major role in variety applications including security, remote sensing and hyperspectral. Deep learning-based algorithms have made significant advances in video object recognition in recent years. The conventional machine learning applications are resulted in poor accuracy. In this article, a unified deep learning based convolutional neural network (DLCNN) is developed for composite multi object recognition in videos. To enhance composite object recognition, DLCNN analyses a composite item as a collection of background and adds part information into feature information. Correct component information may help forecast the shape and size of a feature data, which helps solve challenges caused by different forms and sizes of various objects. Finally, the DLCNN draws a bounding box to detected object by using the background features. Further, the simulation results shows that the performance of proposed method is improved as compared to the state of art approaches.
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基于深度学习的卷积神经网络实现目标检测与跟踪
视频目标检测在安防、遥感和高光谱等多种应用中发挥着重要作用。近年来,基于深度学习的算法在视频对象识别方面取得了重大进展。传统的机器学习应用导致精度差。本文提出了一种基于深度学习的统一卷积神经网络(DLCNN),用于视频中的复合多目标识别。为了增强复合物体的识别能力,DLCNN将复合物体作为背景集合进行分析,并在特征信息中加入部分信息。正确的部件信息可以帮助预测特征数据的形状和尺寸,从而解决各种物体形状和尺寸不同带来的挑战。最后,DLCNN利用背景特征对被检测对象绘制边界框。此外,仿真结果表明,与目前的方法相比,该方法的性能得到了提高。
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