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The Method for Detecting Small Lesions in Medical Image Based on Sliding Window

机译:基于滑动窗口的医学图像中小病变检测方法

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At present, the research on computer-aided diagnosis includes the sample image segmentation, extracting visual features, generating the classification model by learning, and according to the model generated to classify and judge the inspected images. However, this method has a large scale of calculation and speed is slow. And because medical images are usually low contrast, when the traditional image segmentation method is applied to the medical image, there is a complete failure. As soon as possible to find the region of interest, improve detection speed, this topic attempts to introduce the current popular visual attention model into small lesions detection. However, Itti model is mainly for natural images. But the effect is not ideal when it is used to medical images which usually are gray images. Especially in the early stages of some cancers, the focus of a disease in the whole image is not the most significant region and sometimes is very difficult to be found. But these lesions are prominent in the local areas. This paper proposes a visual attention mechanism based on sliding window, and use sliding window to calculate the significance of a local area. Combined with the characteristics of the lesion, select the features of gray, entropy, corner and edge to generate a saliency map. Then the significant region is segmented and distinguished. This method reduces the difficulty of image segmentation, and improves the detection accuracy of small lesions, and it has great significance to early discovery, early diagnosis and treatment of cancers.
机译:目前,计算机辅助诊断的研究包括采样图像分割,提取视觉特征,通过学习产生分类模型,并根据生成的模型来分类和判断被检查的图像。但是,这种方法具有大规模的计算和速度速度很慢。并且因为医学图像通常是低对比度的,因为当传统的图像分割方法应用于医学图像时,存在完全失败。尽快找到感兴趣的区域,提高检测速度,这一主题试图将当前流行的视觉注意模型引入小病变检测。但是,ITTI模型主要用于自然图像。但是当它用于通常是灰色图像的医学图像时,效果并不理想。特别是在一些癌症的早期阶段,整个形象中疾病的重点不是最重要的区域,有时候很难被发现。但这些病变在当地突出。本文提出了一种基于滑动窗口的视觉注意机制,并使用滑动窗口来计算局域的重要性。结合病变的特点,选择灰色,熵,角和边缘的特征,以产生显着图。然后将重要区域分段并区分。该方法降低了图像分割的难度,提高了小病变的检测精度,对早期发现,早期诊断和治疗具有重要意义。

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