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2D Gun's type classification using edge detection algorithm and SUSAN low level image processing

机译:2D枪的类型分类使用边缘检测算法和苏珊低级图像处理

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The objective of this research was to develop the system of gun type classification using Image Recognition Theory. The amounts of 505 images were used as the samples of the study: 80 control, or master, images and 425 experimental images. There were eight gun types using in this experimental which are revolver gun, semi-automatic gun, shotgun, submachine gun, light machine gun, heavy machine gun, recoilless gun and rifle gun. The image samples used in the study were not limited by the image size nor by the direction of the muzzle. The gun types and models classification using image recognition theory (GTMC) comprises of two processes: master image storage process and image recognition process. The preprocessing image is applied to all image samples to adjust the photo scale and the gray scale. Later, Canny was utilized to find the edge of the image. Together with that, SUSAN (Smallest Univalue Segment Assimilating Nucleus) was also applied to trace the edge line and to detect the edge angle of the image. The received data were then examined using block matching between the master image blocks and the experimental image blocks with block matching algorithm. The values received from matching the blocks were the match point and the average similarity of the experimental images against the master images stored in the database. The highest value of the average similarity would be shown as the gun type. It was found from the experiment that GTMC was able to classify the images of the semi-automatic gun with the highest accuracy or 99.06%, and the average accurate gun image classification was 81.25%.
机译:本研究的目的是使用图像识别理论开发枪型分类系统。使用505个图像的量作为研究的样本:80控制,或掌握,图像和425实验图像。在这个实验中有八种枪式类型是左轮手枪枪,半自动枪,霰弹枪,冲锋枪,轻型机枪,重型机枪,重新食用枪和步枪枪。该研究中使用的图像样本不受图像尺寸的限制,也不受枪口的方向。使用图像识别理论(GTMC)的枪类型和模型分类包括两个过程:主图像存储过程和图像识别过程。预处理图像应用于所有图像样本以调整照片刻度和灰度。后来,用罐头用于找到图像的边缘。与此同时,苏珊(最小的独一无二的段同化核)也被应用于追踪边缘线并检测图像的边缘角度。然后使用主图像块与具有块匹配算法的实验图像块之间的块匹配检查接收的数据。从匹配块接收的值是匹配点和对存储在数据库中的主图像的实验图像的平均相似度。平均相似度的最高值将显示为枪型。从实验中发现,GTMC能够将半自动枪的图像与最高精度或99.06%分类,平均精确的枪图像分类为81.25%。

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