2022
DOI: 10.18280/ria.360507
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Target Detection in Video Images Using HOG-Based Cascade Classifier

Abstract: Detecting small objects using computer vision is a challenging task due to their small size in the image and therefore the lack of features when describing them. In this paper, a computer was trained to detect three small balls using 20 levels of the AdaBoost cascade classifier. The features of the balls in each level are described using the HOG feature descriptor. Three balls were recorded in practice at various distances (d = 2, 3, 4, ..., 10 m) from the camera and the targets (balls). The frames are then ta… Show more

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“…Where in each re-training the algorithm increases the values of the wrongly classified samples, which means an increase in interest in them for the purpose of improving the performance of the classifiers. The learning process of the classifiers is repeated a certain number of times and then these classifiers are aligned to make one powerful classifier [27]. The steps of the algorithm can be summarized as follows:…”
Section: Adaboostmentioning
confidence: 99%
“…Where in each re-training the algorithm increases the values of the wrongly classified samples, which means an increase in interest in them for the purpose of improving the performance of the classifiers. The learning process of the classifiers is repeated a certain number of times and then these classifiers are aligned to make one powerful classifier [27]. The steps of the algorithm can be summarized as follows:…”
Section: Adaboostmentioning
confidence: 99%