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E-raamat: Pattern Recognition and Computer Vision: 7th Chinese Conference, PRCV 2024, Urumqi, China, October 18-20, 2024, Proceedings, Part XIV

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This 15-volume set LNCS 15031-15045 constitutes the refereed proceedings of the 7th Chinese Conference on Pattern Recognition and Computer Vision, PRCV 2024, held in Urumqi, China, during October 1820, 2024.





The 579 full papers presented were carefully reviewed and selected from 1526 submissions. The papers cover various topics in the broad areas of pattern recognition and computer vision, including machine learning, pattern classification and cluster analysis, neural network and deep learning, low-level vision and image processing, object detection and recognition, 3D vision and reconstruction, action recognition, video analysis and understanding, document analysis and recognition, biometrics, medical image analysis, and various applications.
A Fine-grained Recurrent Network for Image Segmentation via Vector Field
Guided Refinement.- Semi-supervised Medical Image Segmentation with
Strong/Weak Task-aware Consistency.- Steerable Pyramid Transform Enables
Robust Left Ventricle Quantification.- Semantics Guided Disentangled GAN for
Chest X-ray Image Rib Segmentation.- MedPrompt: Cross-Modal Prompting for
Multi-Task Medical Image Translation.- Enhancing Hippocampus Segmentation:
Swin.- UNETR Model Optimization with CPS.- Uncertainty-inspired Credible
Pseudo-Labeling in Semi-Supervised Medical Image Segmentation.- MFPNet: Mixed
Feature Perception Network for Automated Skin Lesion Segmentation.-
LD-BSAM:Combined Latent Diffusion with Bounding SAM for HIFU target region
segmentation.- Hierarchical Decoder with Parallel Transformer and CNN for
Medical Image Segmentation. -CLASS-AWARE CROSS PSEUDO SUPERVISION FRAMEWORK
FOR SEMI-SUPERVISED MULTI-ORGAN SEGMENTATION IN ABDOMINAL CT.- SCANSAPAN:
Anti-curriculum Pseudo-labelling and Adversarial Noises Training for
Semi-supervised Medical Image Classification.- Multi-Modal Learning for
Predicting the Progression of Transarterial Chemoembolization Therapy in
Hepatocellular Carcinoma.- Growing with the help of multiple teachers:
lightweight and noise-resistant student model for medical image
classification.- DRA-CN: A novel Dual-Resolution Attention Capsule Network
for Histopathology Image Classification.- A Mask Guided Network for
Self-Supervised Low-Dose CT ImagingDental Diagnosis from X-Ray Panoramic
Radiography Images: A Dataset and A Hybrid Framework.- Edge-Guided
Bidirectional-Attention Residual Network for Polyp SegmentationFrom Coarse to
Fine: A Novel Colon Polyp Segmentation Method Like Human Observation.-
Pseudo-Prompt Generating in Pre-trained Vision-Language Models for
Multi-Label Medical Image Classification.- Multi-Perspective Text-Guided
Multimodal Fusion Network for Brain Tumor Segmentation.- Continual Learning
for Fundus Image Segmentation.- Embedded Deep Learning Based CT Images for
Rifampicin Resistant Tuberculosis Diagnosis.- Combining Segment Anything
Model with Domain-Specific Knowledge for Semi-Supervised Learning in Medical
Image Segmentation.- Meply: A Large-scale Dataset and Baseline Evaluations
for Metastatic Perirectal Lymph Node Segmentation.- Swin-HAUnet: A
Swin-Hierarchical Attention Unet For Enhanced Medical Image Segmentation.-
ODC-SA Net: Orthogonal Direction Enhancement and Scale Aware Network for
Polyp Segmentation.- Two-Stage Multi-Scale Feature Fusion for Small Medical
Object Segmentation.- A Two-Stage Automatic Collateral Scoring Framework
Based on Brain Vessel Segmentation.- SPARK: Cross-Guided Knowledge
Distillation with Spatial Position Augmentation for Medical Image
Segmentation.- VATBoost-Net: Integrating Enhanced Feature Perturbation and
Detail Enhancement for Medical Image Segmentation.- DTIL-Net: Dual-Task
Interactive Learning Network for Automated Grading of Diabetic Retinopathy
and Macular Edema.- DeformSegNet: Segmentation Network Fused with Deformation
Field for Pancreatic CT Scans.- InsSegLN: A Novel 3D Instance Segmentation
Method for Mediastinal Lymph NodeRRANet: A Reverse Region-Aware Network with
Edge Difference for Accurate Breast Tumor Segmentation in Ultrasound
ImagesLearning Frequency and Structure in UDA for Medical Object Detection.-
Skin Lesion Segmentation Method Based On  Global Pixel Weighted Focal Loss.-
Competing Dual-Network with Pseudo-Supervision Rectification for
Semi-Supervised Medical Image Segmentation.- Dual-Branch Perturbation and
Conflict-Based Scribble-Supervised Meibomian Gland Segmentation.