In image analysis,high-precision semantic segmentation predominantly relies on supervised learning.Despite significant advancements driven by deep learning techniques,challenges such as class imbalance and dynamic per...In image analysis,high-precision semantic segmentation predominantly relies on supervised learning.Despite significant advancements driven by deep learning techniques,challenges such as class imbalance and dynamic performance evaluation persist.Traditional weighting methods,often based on pre-statistical class counting,tend to overemphasize certain classes while neglecting others,particularly rare sample categories.Approaches like focal loss and other rare-sample segmentation techniques introduce multiple hyperparameters that require manual tuning,leading to increased experimental costs due to their instability.This paper proposes a novel CAWASeg framework to address these limitations.Our approach leverages Grad-CAM technology to generate class activation maps,identifying key feature regions that the model focuses on during decision-making.We introduce a Comprehensive Segmentation Performance Score(CSPS)to dynamically evaluate model performance by converting these activation maps into pseudo mask and comparing them with Ground Truth.Additionally,we design two adaptive weights for each class:a Basic Weight(BW)and a Ratio Weight(RW),which the model adjusts during training based on real-time feedback.Extensive experiments on the COCO-Stuff,CityScapes,and ADE20k datasets demonstrate that our CAWASeg framework significantly improves segmentation performance for rare sample categories while enhancing overall segmentation accuracy.The proposed method offers a robust and efficient solution for addressing class imbalance in semantic segmentation tasks.展开更多
The traffic encryption brings new challenges to the identification of unknown encrypted traffc.Currently,machine learning is the most commonly used encrypted traffic recognization technology,but this method relies on ...The traffic encryption brings new challenges to the identification of unknown encrypted traffc.Currently,machine learning is the most commonly used encrypted traffic recognization technology,but this method relies on expensive prior label information.Therefore,we propose a subspace clustering via graph auto-encoder network(SCGAE)to recognize unknown applications without prior label information.The SCGAE adopts a graph encoder-decoder structure,which can comprehensively utilize the feature and structure information to extract discriminative embedding representation.Additionally,the self-supervised module is introduced,which use the clustering labels acts as a supervisor to guide the learning of the graph encoder-decoder module.Finally,we obtain the self-expression coefficient matrix through the self-expression module and map it to the subspace for clustering.The results show that SCGAE has better performance than all benchmark models in unknown encrypted traffic recognization.展开更多
基金supported by the Funds for Central-Guided Local Science and Technology Development(Grant No.202407AC110005)Key Technologies for the Construction of a Whole-Process Intelligent Service System for Neuroendocrine Neoplasm.Supported by 2023 Opening Research Fund of Yunnan Key Laboratory of Digital Communications(YNJTKFB-20230686,YNKLDC-KFKT-202304).
文摘In image analysis,high-precision semantic segmentation predominantly relies on supervised learning.Despite significant advancements driven by deep learning techniques,challenges such as class imbalance and dynamic performance evaluation persist.Traditional weighting methods,often based on pre-statistical class counting,tend to overemphasize certain classes while neglecting others,particularly rare sample categories.Approaches like focal loss and other rare-sample segmentation techniques introduce multiple hyperparameters that require manual tuning,leading to increased experimental costs due to their instability.This paper proposes a novel CAWASeg framework to address these limitations.Our approach leverages Grad-CAM technology to generate class activation maps,identifying key feature regions that the model focuses on during decision-making.We introduce a Comprehensive Segmentation Performance Score(CSPS)to dynamically evaluate model performance by converting these activation maps into pseudo mask and comparing them with Ground Truth.Additionally,we design two adaptive weights for each class:a Basic Weight(BW)and a Ratio Weight(RW),which the model adjusts during training based on real-time feedback.Extensive experiments on the COCO-Stuff,CityScapes,and ADE20k datasets demonstrate that our CAWASeg framework significantly improves segmentation performance for rare sample categories while enhancing overall segmentation accuracy.The proposed method offers a robust and efficient solution for addressing class imbalance in semantic segmentation tasks.
文摘The traffic encryption brings new challenges to the identification of unknown encrypted traffc.Currently,machine learning is the most commonly used encrypted traffic recognization technology,but this method relies on expensive prior label information.Therefore,we propose a subspace clustering via graph auto-encoder network(SCGAE)to recognize unknown applications without prior label information.The SCGAE adopts a graph encoder-decoder structure,which can comprehensively utilize the feature and structure information to extract discriminative embedding representation.Additionally,the self-supervised module is introduced,which use the clustering labels acts as a supervisor to guide the learning of the graph encoder-decoder module.Finally,we obtain the self-expression coefficient matrix through the self-expression module and map it to the subspace for clustering.The results show that SCGAE has better performance than all benchmark models in unknown encrypted traffic recognization.