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标准创造价值——访DCSA首席执行官Thomas Bagge先生
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作者 赵博 Thomas Bagge 《中国船检》 2020年第7期40-43,共4页
2019年4月,马士基航运、地中海航运、赫伯罗特和日本海洋网联(ONE)四家航运巨头成立了数字化集装箱航运联盟(Digital Container Shipping Association,简称DSCA),旨在制定共同的数字化信息技术标准,为班轮公司及客户提升效率,随后,DCSA... 2019年4月,马士基航运、地中海航运、赫伯罗特和日本海洋网联(ONE)四家航运巨头成立了数字化集装箱航运联盟(Digital Container Shipping Association,简称DSCA),旨在制定共同的数字化信息技术标准,为班轮公司及客户提升效率,随后,DCSA扩展到九家船公司的参与。 展开更多
关键词 班轮公司 数字化信息技术 首席执行官 集装箱航运 提升效率 赫伯罗特 DCS
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Melanoma Detection Based on Hybridization of Extended Feature Space
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作者 Anuj Kumar Shakti Kumar 《Intelligent Automation & Soft Computing》 SCIE 2023年第8期2175-2198,共24页
Melanoma is a perfidious form of skin cancer.The study offers a hybrid framework for the automatic classification of melanoma.An Auto-matic Melanoma Detection System(AMDS)is used for identifying melanoma from the infe... Melanoma is a perfidious form of skin cancer.The study offers a hybrid framework for the automatic classification of melanoma.An Auto-matic Melanoma Detection System(AMDS)is used for identifying melanoma from the infected area of the skin image using image processing techniques.A larger number of pre-existing automatic melanoma detection systems are either commercial or their accuracy can be further improved.The research problem is to identify the best preprocessing technique,feature extractor,and classifier for melanoma detection using publically available MED-NODE data set.AMDS goes through four stages.The preprocessing stage is for noise removal;the segmentation stage is for extracting lesions from infected skin images;the feature extraction stage is for determining the features like asymmetry,border,and color,and the classification stage is to classify the lesion as benign or melanoma.The infected input image for the AMDS may contain impurities such as noise,illumination,artifacts,and hairs.In the proposed methodology an algorithm LePrePro is proposed for the prepro-cessing stage for denoising and brightness cum contrast normalization and another algorithm LeFET is proposed for extending the feature vector space in the feature extraction stage using a hybrid approach.In the study,a novel approach has been proposed in which different classifiers,feature extractions,and data preprocessing steps of the AMDS are compared.In a conclusion,this comparison revealed that on experimentation using Med-Node and ISIC 2017 Dataset,the best results included Gaussian blur as the best data preprocessing step,Extended feature vector which is the combination of Hue Saturation Value(HSV),and Local Binary Pattern(LBP)was the best feature extraction method,and the ensemble bagged tree was the best classification technique on the Med-Node data sets with 99%Area Under the Receiver Operating Characteristic Curve(AUC),93.52%accuracy,90.82%sensitivity,and 98.36%specificity in the proposed automatic melanoma detection system. 展开更多
关键词 Machine learning melanoma detection feature extraction benign classification image processing
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