A comprehensive review on 3D object detection and 6D pose estimation with deep learning
Nowadays, computer vision with 3D (dimension) object detection and 6D (degree of
freedom) pose assumptions are widely discussed and studied in the field. In the 3D object …
freedom) pose assumptions are widely discussed and studied in the field. In the 3D object …
A review of fuzzy and pattern-based approaches for class imbalance problems
I Lin, O Loyola-González, R Monroy… - Applied Sciences, 2021 - mdpi.com
The usage of imbalanced databases is a recurrent problem in real-world data such as
medical diagnostic, fraud detection, and pattern recognition. Nevertheless, in class …
medical diagnostic, fraud detection, and pattern recognition. Nevertheless, in class …
Integration of an imbalance framework with novel high-generalizable classifiers for radiomics-based distant metastases prediction of advanced nasopharyngeal …
Abstract Model overfitting and data imbalance are two main challenges in radiomics studies.
In this study, we develop a high-generalizable classifier MERGE (Multi-kErnel Regression …
In this study, we develop a high-generalizable classifier MERGE (Multi-kErnel Regression …
Network Intrusion Detection Based on Amino Acid Sequence Structure Using Machine Learning
TAL Ibaisi, S Kuhn, M Kaiiali, M Kazim - Electronics, 2023 - mdpi.com
The detection of intrusions in computer networks, known as Network-Intrusion-Detection
Systems (NIDSs), is a critical field in network security. Researchers have explored various …
Systems (NIDSs), is a critical field in network security. Researchers have explored various …
A new method for learning decision tree classifier
Z Saurav, MM Mitu, NS Ritu, MA Hasan… - 2023 International …, 2023 - ieeexplore.ieee.org
Decision Tree (DT) induction is one of the popular data modelling techniques that commonly
used in many real-world supervised learning problems. DT is a top-down recursive divide …
used in many real-world supervised learning problems. DT is a top-down recursive divide …
Dual-Level Augmentation Radiomics Analysis for Multisequence MRI Meningioma Grading
Simple Summary Prediction of high-grade meningioma on preoperative Magnetic
Resonance Imaging (MRI) is essential in therapeutic planning and evaluation of prognosis …
Resonance Imaging (MRI) is essential in therapeutic planning and evaluation of prognosis …
GT2FS-SMOTE: An intelligent oversampling approach based upon general type-2 fuzzy sets to detect web spam
With the growing internet, web spam is also increasing, which majorly affect the user
experiences with search engines. Web spam methods target the search engine's internal …
experiences with search engines. Web spam methods target the search engine's internal …
Daily unbalanced action recognition based on active learning
Y Liu, Z Li, Z Huan, B Zhou, S Shen, S Gao - Multimedia Tools and …, 2024 - Springer
The identification of daily activities is mainly limited by the imbalanced number of actions
and the diversity of categories, which can lead to unsatisfactory classification results and …
and the diversity of categories, which can lead to unsatisfactory classification results and …
[PDF][PDF] State of the art on data level methods to address class imbalance problem in binary classification
K Upadhyay, P Kaur, S Prasad… - GIS Science …, 2021 - researchgate.net
Classification is used for to detect different kinds of patterns from the data-set. Although, the
classification techniques are very much successful in solving real life problems but are not …
classification techniques are very much successful in solving real life problems but are not …
Comparative Evaluation of Imbalanced Data Management Techniques for Solving Classification Problems on Imbalanced Datasets
T Watthaisong, K Sunat, N Muangkote - Statistics, Optimization & …, 2024 - iapress.org
Dealing with imbalanced data is crucial and challenging when develo** effective machine-
learning models for data classification purposes. It significantly impacts the classification …
learning models for data classification purposes. It significantly impacts the classification …