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Adaptive segmentation based on multi-classification model for dermoscopy images 被引量:2
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作者 Fengying XIE Yefen WU +2 位作者 Yang LI Zhiguo JIANG Rusong MENG 《Frontiers of Computer Science》 SCIE EI CSCD 2015年第5期720-728,共9页
Segmentation accuracy of dermoscopy images is important in the computer-aided diagnosis of skin cancer and a wide variety of segmentation methods for dermoscopy images have been developed. Considering that each method... Segmentation accuracy of dermoscopy images is important in the computer-aided diagnosis of skin cancer and a wide variety of segmentation methods for dermoscopy images have been developed. Considering that each method has its strengths and weaknesses, a novel adaptive segmentation framework based on multi-classification model is proposed for dermoscopy images. Firstly, five patterns of images are summarized according to the factors influencing segmentation. Then the matching relation is established between each image pattern and its optimal segmentationmethod. Next, the given image is classified into one of the five patterns by the multi-classification model based on BP neural network. Finaily, the optimal segmentation method for this image is selected according to the matching relation, and then the image is effectively segmented. Experiments show that the proposed method delivers better accuracy and more robust segmentation results compared with the other seven state-of-the-art methods. 展开更多
关键词 adaptive segmentation feature extraction pattern classification dermoscopy image
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Adaptive Lifting Transform for Classification of Hyperspectral Signatures
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作者 Rajesh Agrawal Narendra Bawane 《Advances in Remote Sensing》 2015年第2期138-146,共9页
Supervised classification of hyperspectral images is a challenging task because of the higher dimensionality of a pixel signature. The conventional classifiers require large training data set;however, practically limi... Supervised classification of hyperspectral images is a challenging task because of the higher dimensionality of a pixel signature. The conventional classifiers require large training data set;however, practically limited numbers of labeled pixels are available due to complexity and cost involved in sample collection. It is essential to have a method that can reduce such higher dimensional data into lower dimensional feature space without the loss of useful information. For classification purpose, it will be useful if such a method takes into account the nature of the underlying signal when extracting lower dimensional feature vector. The lifting framework provides the required flexibility. This article proposes the adaptive lifting wavelet transform to extract the lower dimensional feature vectors for the classification of hyperspectral signatures. The proposed adaptive update step allows the decomposition filter to adapt to the input signal so as to retain the desired characteristics of the signal. A three-layer feed forward neural network is used as a supervised classifier to classify the extracted features. The effectiveness of the proposed method is tested on two hyperspectral data sets (HYDICE & ROSIS sensors). The performance of the proposed method is compared with first generation discrete wavelet transform (DWT) based feature extraction method and previous studies that use the same data. The indices used for measuring performance are overall classification accuracy and Kappa value. The experimental results show that the proposed adaptive lifting scheme (ALS) has excellent results with a small size training set. 展开更多
关键词 adaptive LIFTING Scheme pattern classification HYPERSPECTRAL image feature extraction Neural Network
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基于改进U-net的金属工件表面缺陷分割方法
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作者 王一 龚肖杰 程佳 《激光与光电子学进展》 CSCD 北大核心 2023年第15期323-328,共6页
针对金属工件表面缺陷分割精度低的问题,通过对工件表面图像缺陷特征研究,提出以U-net为基础,结合多尺度自适应形态特征提取模块及瓶颈注意力模块的工件表面缺陷分割模型。首先,在网络中嵌入多特征注意力有效聚合模块,提高信息的利用率... 针对金属工件表面缺陷分割精度低的问题,通过对工件表面图像缺陷特征研究,提出以U-net为基础,结合多尺度自适应形态特征提取模块及瓶颈注意力模块的工件表面缺陷分割模型。首先,在网络中嵌入多特征注意力有效聚合模块,提高信息的利用率,提取更多相关特征,从而高精度地提取缺陷目标。然后,在网络中引入瓶颈注意力模块,增加缺陷目标的权重,优化特征的提取,获取更多的特征信息,从而获得更好的分割精度。改进后的网络平均精度达到0.8749,比原网络相比提高了2.92%,平均交并比达到0.8625,提高了3.72%。与原始网络相比,改进后的网络具有更好分割的精度,可以获得更好的分割结果。 展开更多
关键词 表面光学 表面缺陷 图像分割 U-net网络 多特征注意力有效聚合模块 瓶颈注意力模块
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改进FCM和LFP相结合的白细胞图像分类 被引量:4
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作者 庞春颖 刘记奎 韩立喜 《中国图象图形学报》 CSCD 北大核心 2013年第5期545-551,共7页
研究白细胞图像分类识别中有效的图像分割与特征提取方法,以提高白细胞图像的正确识别率。由于某些白细胞(粒细胞)中颗粒的存在,严重影响细胞核与细胞质区域的正确分割,通过将空间信息与核函数融入模糊C-均值聚类(FCM)算法,提出一种改进... 研究白细胞图像分类识别中有效的图像分割与特征提取方法,以提高白细胞图像的正确识别率。由于某些白细胞(粒细胞)中颗粒的存在,严重影响细胞核与细胞质区域的正确分割,通过将空间信息与核函数融入模糊C-均值聚类(FCM)算法,提出一种改进的FCM算法。应用该算法对白细胞图像进行分割,并采用数学形态学方法对分割后的图像进行处理,获得了很好的分割效果,解决了粒细胞的质核分割难题。对于细胞的纹理特征提取,通过对局部二值模式(LBP)中阈值参数的模糊化,建立了基于局部模糊模式(LFP)的纹理特征提取算法。运用本文方法进行图像分割和纹理提取,以支持向量机作为分类器,对CellAtlas的100幅白细胞图像进行了分类识别的实验,结果表明白细胞的正确识别率达到93%。 展开更多
关键词 白细胞分类 图像分割 模糊C-均值聚类 纹理特征提取 局部模糊模式
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