Research Journal of Applied Sciences, Engineering and Technology 论文

2017Research Journal of Applied Sciences Engineering and Technology引用 717
Image Processing and 3D ReconstructionCurrency Recognition and DetectionCultural Heritage Materials Analysis

详细信息

发表期刊/会议
Research Journal of Applied Sciences Engineering and Technology
发表日期
2017-09-15
发表年份
2017

关键词

Image Processing and 3D ReconstructionCurrency Recognition and DetectionCultural Heritage Materials Analysis

摘要

The objective of this study is to suggest a method for classifying archeological fragments into groups. For this task, the method suggested begins with conversion of images from their original RGB color to a Hue, Saturation and Value (HSV) color. From that point forward, a 2D median filtering algorithm is implemented to remove any resultant noise. Next, each image is separated into six sub-block of equivalent size. In order to extract the feature for each sub-block, it is represented as a vector intersection of colors between each part of the image and the corresponding parts of the five remaining images. At this stage, we obtain a vector that consists of the six values for each image. For the last stage, a Self-Organization Map (SOM) Neural Network classifies the fragments into groups relying upon their HSV color feature. The algorithm was tested on several images of pottery fragments and the results achieved demonstrate this approach is promising and is able to cluster fragments into groups with high precision.