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Deep Belief Network for the Enhancement of Ultrasound Images with Pelvic Lesions

机译:深度信念网络,用于增强具有骨盆病变的超声图像

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摘要

It is well known that ultrasound images are cost-efficient and exhibit hassle-free usage. However, very few works have focused on exploiting the ultrasound modality for lesion diagnosis. Moreover, there is no reliable contribution reported in the literature for diagnosing pelvic lesions from the pelvic portion of humans, especially females. While few contributions are found for diagnosis of lesions in the pelvic region, no effort has been made on enhancing the images. Inspired from the neural network (NN), our methodology adopts deep belief NN for enhancing the ultrasound image with pelvic lesions. The higher-order statistical characteristics of image textures, such as entropy and autocorrelation, are considered to enhance the image from its noisy environment. The alignment problem is considered using skewness. The proposed method is compared with the existing NN method to demonstrate its enhancement performance.
机译:众所周知,超声图像是具有成本效益并且提供无忧使用的使用。 然而,很少有效地专注于利用超声方式进行病变诊断。 此外,文献中没有报告的贡献没有可靠的贡献,用于从人类的骨盆部分,特别是女性的骨盆部分诊断骨盆病变。 虽然发现对骨盆区域的病变诊断少数贡献,但没有努力增强图像。 从神经网络(NN)的启发,我们的方法采用深度信仰NN,用于用骨盆病变增强超声图像。 认为图像纹理的高阶统计特征,例如熵和自相关,被认为是从其嘈杂的环境中增强图像。 使用偏斜,考虑对准问题。 将该方法与现有的NN方法进行比较,以展示其增强性能。

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