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Implementation of Nearest Neighbor using HSV to Identify Skin Disease

机译:使用HSV识别皮肤病的最近邻居的实现

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Today, Android is one of the most widely used operating system in the world. Most of android device has a camera that could capture an image, this feature could be optimized to identify skin disease. The disease is one of health problem caused by bacterium, fungi, and virus. The symptoms of skin disease usually visible. In this work, the symptoms that captured as image contains HSV in every pixel of the image. HSV can extracted and then calculate to earn euclidean value. The value compared using nearest neighbor algorithm to discover closer value between image testing and image training to get highest value that decide class label or type of skin disease. The testing result show that 166 of 200 or about 80% is accurate. There are some reasons that influence the result of classification model like number of image training and quality of android device's camera.
机译:今天,Android是世界上使用最广泛的操作系统之一。大多数Android设备都有一个可捕获图像的相机,可以优化此功能以识别皮肤病。该疾病是由细菌,真菌和病毒引起的健康问题之一。皮肤病的症状通常可见。在这项工作中,捕获为图像的症状包含图像的每个像素中的HSV。 HSV可以提取,然后计算以获得欧几里德值。使用最近邻算法比较的值,以发现图像测试和图像训练之间的更近的值,以获得最高值,以确定类标签或皮肤病类型。测试结果表明,20066的200或约80%是准确的。有一些原因会影响种类模型的结果,如图像训练数量和Android设备的相机的质量。

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