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2020 21st International Radar Symposium (IRS) 2020
DOI: 10.23919/irs48640.2020.9253924
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Target Tracking in Blind Range of Radars With Deep Learning

Abstract: Surveillance radars form the first line of defense in border areas. But due to highly uneven terrains, there are pockets of vulnerability for the enemy to move undetected till they are in the blind range of the radar. This class of targets are termed the 'pop up' targets. They pose a serious threat as they can inflict severe damage to life and property. Blind ranges occur by way of design in pulsed radars. To minimize the blind range problem, multistatic radar configuration or dual pulse transmission methods w… Show more

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Cited by 2 publications
(1 citation statement)
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“…Generally speaking, target tracking refers to inferring the subsequent unknown target information according to the known target state information in the video sequence, and obtaining the most likely location of the target. The ability to use deep learning techniques to improve computer vision problems [ 1 ], especially in image classification [ 2 ], target detection [ 3 ], target tracking [ 4 ], semantic segmentation [ 5 ], etc.…”
Section: Introductionmentioning
confidence: 99%
“…Generally speaking, target tracking refers to inferring the subsequent unknown target information according to the known target state information in the video sequence, and obtaining the most likely location of the target. The ability to use deep learning techniques to improve computer vision problems [ 1 ], especially in image classification [ 2 ], target detection [ 3 ], target tracking [ 4 ], semantic segmentation [ 5 ], etc.…”
Section: Introductionmentioning
confidence: 99%