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Night Vision Object Tracking System Using Correlation Aware LSTM-Based Modified Yolo Algorithm
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作者 R.Anandha Murugan B.Sathyabama 《Intelligent Automation & Soft Computing》 SCIE 2023年第4期353-368,共16页
Improved picture quality is critical to the effectiveness of object recog-nition and tracking.The consistency of those photos is impacted by night-video systems because the contrast between high-profile items and diffe... Improved picture quality is critical to the effectiveness of object recog-nition and tracking.The consistency of those photos is impacted by night-video systems because the contrast between high-profile items and different atmospheric conditions,such as mist,fog,dust etc.The pictures then shift in intensity,colour,polarity and consistency.A general challenge for computer vision analyses lies in the horrid appearance of night images in arbitrary illumination and ambient envir-onments.In recent years,target recognition techniques focused on deep learning and machine learning have become standard algorithms for object detection with the exponential growth of computer performance capabilities.However,the iden-tification of objects in the night world also poses further problems because of the distorted backdrop and dim light.The Correlation aware LSTM based YOLO(You Look Only Once)classifier method for exact object recognition and deter-mining its properties under night vision was a major inspiration for this work.In order to create virtual target sets similar to daily environments,we employ night images as inputs;and to obtain high enhanced image using histogram based enhancement and iterative wienerfilter for removing the noise in the image.The process of the feature extraction and feature selection was done for electing the potential features using the Adaptive internal linear embedding(AILE)and uplift linear discriminant analysis(ULDA).The region of interest mask can be segmen-ted using the Recurrent-Phase Level set Segmentation.Finally,we use deep con-volution feature fusion and region of interest pooling to integrate the presently extremely sophisticated quicker Long short term memory based(LSTM)with YOLO method for object tracking system.A range of experimentalfindings demonstrate that our technique achieves high average accuracy with a precision of 99.7%for object detection of SSAN datasets that is considerably more than that of the other standard object detection mechanism.Our approach may therefore sati 展开更多
关键词 Object monitoring night vision image ssan dataset adaptive internal linear embedding uplift linear discriminant analysis recurrent-phase level set segmentation correlation aware LSTM based yolo classifier algorithm
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“沉默的文学”与“不确定内在性”——哈桑后现代主义文艺特征透视 被引量:1
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作者 肖艳平 《太原理工大学学报(社会科学版)》 2017年第1期81-85,共5页
美国文学批评家伊哈布·哈桑通过对西方文学领域中后现代主义特征的独到剖析,赢得西方学界的首肯。他在《后现代的转向》一书中,通过分析"沉默的文学",创造了"不确定内在性"这一概念,用以概括西方后现代主义及... 美国文学批评家伊哈布·哈桑通过对西方文学领域中后现代主义特征的独到剖析,赢得西方学界的首肯。他在《后现代的转向》一书中,通过分析"沉默的文学",创造了"不确定内在性"这一概念,用以概括西方后现代主义及其文学的根本特质。这种特质彰显出后现代主义"多元对话"的倾向。 展开更多
关键词 哈桑 沉默的文学 后现代主义 不确定内在性 《芬尼根的守灵》
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