Turnitin
降AI改写
早检测系统
早降重系统
Turnitin-UK版
万方检测-期刊版
维普编辑部版
Grammarly检测
Paperpass检测
checkpass检测
PaperYY检测
A survey on deep learning for skin lesion segmentation
Skin cancer is a major public health problem that could benefit from computer-aided
diagnosis to reduce the burden of this common disease. Skin lesion segmentation from …
diagnosis to reduce the burden of this common disease. Skin lesion segmentation from …
Artificial intelligence in cornea, refractive surgery, and cataract: basic principles, clinical applications, and future directions
Corneal diseases, uncorrected refractive errors, and cataract represent the major causes of
blindness globally. The number of refractive surgeries, either cornea-or lens-based, is also …
blindness globally. The number of refractive surgeries, either cornea-or lens-based, is also …
Anomaly detection via improvement of GPR image quality using ensemble restoration networks
NQ Hoang, S Shim, S Kang, JS Lee - Automation in Construction, 2024 - Elsevier
Ground penetrating radar (GPR) has been commonly applied for the non-destructive
investigation of underground anomalies. This study proposes a robust anomaly detection …
investigation of underground anomalies. This study proposes a robust anomaly detection …
Uncertainty-aware representation calibration for semi-supervised medical imaging segmentation
Semi-supervised learning methods aim to address the scarcity of pixel-level annotations in
medical image segmentation. Previous approaches typically rely on filtering strategies to …
medical image segmentation. Previous approaches typically rely on filtering strategies to …
MASS: Modality-collaborative semi-supervised segmentation by exploiting cross-modal consistency from unpaired CT and MRI images
Training deep segmentation models for medical images often requires a large amount of
labeled data. To tackle this issue, semi-supervised segmentation has been employed to …
labeled data. To tackle this issue, semi-supervised segmentation has been employed to …
A dual-stage semi-supervised pre-training approach for medical image segmentation
Deep neural networks have played a vital role in develo** automated methods for
addressing medical image segmentation. However, their reliance on labeled data impedes …
addressing medical image segmentation. However, their reliance on labeled data impedes …
A temporal type-2 fuzzy system for time-dependent explainable artificial intelligence
Explainable artificial intelligence (XAI) focuses on transparent AI models and decisions,
which are easy to understand, analyze, and augment by a nontechnical audience. Fuzzy …
which are easy to understand, analyze, and augment by a nontechnical audience. Fuzzy …
MobileNetV2 ensemble segmentation for mandibular on panoramic radiography
Mandibular segmentation is an important step in gender identification and age estimation,
which aims to segment the mandible from intact and complete panoramic radiograph. One of …
which aims to segment the mandible from intact and complete panoramic radiograph. One of …
Comparative Analysis of nnUNet and MedNeXt for Head and Neck Tumor Segmentation in MRI-guided Radiotherapy
Radiation therapy (RT) is essential in treating head and neck cancer (HNC), with magnetic
resonance imaging (MRI)-guided RT offering superior soft tissue contrast and functional …
resonance imaging (MRI)-guided RT offering superior soft tissue contrast and functional …
Semi-supervised structure attentive temporal mixup coherence for medical image segmentation
Deep convolutional neural networks have shown eminent performance in medical image
segmentation in supervised learning. However, this success is predicated on the availability …
segmentation in supervised learning. However, this success is predicated on the availability …