A GUI based application for Low Intensity Object Classification & Count using SVM Approach

Vishal Gupta, Nikhil Marriwala, Monish Gupta
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引用次数: 3

Abstract

There is a requirement of processing low intensity images from EO (Electro Optical), IR (Infra-Red) and ISAR (Inverse Synthetic Aperture Radar) sensors on airborne platforms to detect and classify targets(ships, vessels, other objects) against a library of images in real time with a degree of confidence. Pre-processing of the test input images improves the accuracy of detection and classification. The proposed method verifies and validates the trained software against the pre-processed images. The objective of the proposed approach is to train the machine learning technique in order to estimate the efficiency and accuracy of the classified and detected output from the Deep leaning models. In our work, we have compared the results in terms of accuracy and time with the previous researchers work and we have summarized about our method gives better accuracy.
基于GUI的基于SVM方法的低强度目标分类与计数应用
要求处理机载平台上EO(光电),IR(红外)和ISAR(逆合成孔径雷达)传感器的低强度图像,以具有一定程度的可信度实时检测和分类图像库中的目标(船舶,船只,其他物体)。对测试输入图像进行预处理,提高了检测和分类的准确性。该方法对训练后的软件与预处理后的图像进行了验证。提出的方法的目的是训练机器学习技术,以估计深度学习模型分类和检测输出的效率和准确性。在我们的工作中,我们将结果在准确性和时间方面与前人的工作进行了比较,总结出我们的方法具有更好的准确性。
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