Kadek Oki Sanjaya, G. Indrawan, Kadek Yota Ernanda Aryanto
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In this research, detection testing of cigarettes object is in samples of video with the resolution 160x120 pixels, 320x240 pixels, 640x480 pixels under condition of on 1 cigarette object and condition 2 cigarettes object. The result of this research indicated that percentage of average accuracy highest 93.3% at condition 1 cigarette object and 86,7% in the condition 2 cigarette object that was detected on the video with resolution 640x480 pixels, while the percentage of accuracy lowest 90% at condition 1cigarette object, and 81,7% at the condition 2 cigarette objects, detected on the video with the lowest resolution 160x120 pixels. The percentage of average errors at detection cigarettes object was inversely with percentage of accuracy. 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The result of this research indicated that percentage of average accuracy highest 93.3% at condition 1 cigarette object and 86,7% in the condition 2 cigarette object that was detected on the video with resolution 640x480 pixels, while the percentage of accuracy lowest 90% at condition 1cigarette object, and 81,7% at the condition 2 cigarette objects, detected on the video with the lowest resolution 160x120 pixels. The percentage of average errors at detection cigarettes object was inversely with percentage of accuracy. 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引用次数: 1
摘要
目标检测作为图像处理领域的一门特殊学科,受到了科学家们的广泛研究。虽然本课题的应用已经实现,但基本上这项技术还不成熟,需要进一步的研究开发才能获得预期的结果。本研究的目的是通过使用Viola Jones方法(Haar级联分类器)来检测视频中的香烟物体。该方法结合了一些概念(Haar feature, integral image, Adaboost, Cascade Classifier)作为检测目标的主要方法,具有速度快、精度高的特点。在本研究中,香烟物体的检测测试是在1个香烟物体和2个香烟物体的条件下,在分辨率为160x120像素、320x240像素、640x480像素的视频样本中进行的。研究结果表明,在分辨率为640x480像素的视频中,检测到的条件1香烟物体的平均准确率最高,为93.3%,条件2香烟物体的平均准确率最高,为86.7%;而在分辨率最低的视频中,检测到的条件1香烟物体的平均准确率最低,为90%,条件2香烟物体的平均准确率最低,为81.7%。检测香烟对象的平均误差百分比与准确率百分比成反比。为了使检测系统能够更好地识别香烟的对象,那么就需要提高数据库中的样本数量,能够在各种条件下代表各种类型的香烟,并且可以添加与香烟对象相关的新参数
PENDETEKSIAN OBJEK ROKOK PADA VIDEO BERBASIS PENGOLAHAN CITRA DENGAN MENGGUNAKAN METODE HAAR CASCADE CLASSIFIER
Object detection is a topic widely studied by the scientists as a special study in image processing. Although applications of this topic have been implemented, but basically this technology is not yet mature, futher research is needed to developed to obtain the desired result. The aim of the present study is to detect cigarette objects on video by using the Viola Jones method (Haar Cascade Classifier). This method known to have speed and high accuracy because of combining some concept (Haar features, integral image, Adaboost, and Cascade Classifier) to be a main method to detect objects. In this research, detection testing of cigarettes object is in samples of video with the resolution 160x120 pixels, 320x240 pixels, 640x480 pixels under condition of on 1 cigarette object and condition 2 cigarettes object. The result of this research indicated that percentage of average accuracy highest 93.3% at condition 1 cigarette object and 86,7% in the condition 2 cigarette object that was detected on the video with resolution 640x480 pixels, while the percentage of accuracy lowest 90% at condition 1cigarette object, and 81,7% at the condition 2 cigarette objects, detected on the video with the lowest resolution 160x120 pixels. The percentage of average errors at detection cigarettes object was inversely with percentage of accuracy. So that the detection system is able to better recognize the object of the cigarette, then the number of samples in the database needs to be improved and able to represent various types of cigarettes under various conditions and can be added new parameters related to cigarette object