Accurate and robust three-dimensional reconstruction of objects allows for applications in many aspects of modern life. Yet, it typically suffers from outliers and noise which often need to be post-processed. Although many algorithms are able to effectively remove the outliers, most require a certain amount of manual tuning of the parameter(s) or to have a parameter(s) set based on the rule of thumb. New machine learning and artificial intelligence-based methods have also been introduced but may require vast parallel computing resources as well as training data. In the present study, a novel combinatory-distance-based method capable of high accuracy outlier detection named as the sorted distance divergence point (SDDP) is introduced. Result...
Outlier detection in high-dimensional datasets is a fundamental and challenging problem across disci...
Distance-based outlier detection is an important data mining technique that finds abnormal data obje...
Distance-based outlier detection is an important data mining technique that finds abnormal data obje...
Accurate and robust three-dimensional reconstruction of objects allows for applications in many aspe...
Detecting outliers in data is an important problem with in-teresting applications in a myriad of dom...
Detecting outliers which are grossly different from or inconsistent with the remaining dataset is a ...
A novel approach to outlier detection and clustering on the ground of the distribution of distances ...
Detecting outliers which are grossly different from or inconsistent with the remaining dataset is a...
Outliers are eccentric data points with anomalous nature. Clustering with outliers has received a lo...
Distance-based outlier detection is widely adopted in many fields, e.g., data mining and machine lea...
This paper investigates outlier detection and reliable local saliency features (e.g. normal) estimat...
This study used different metric distances to estimate density functions in outlier detection. We em...
This study used different metric distances to estimate density functions in outlier detection. We em...
Abstract—Outlier detection in high-dimensional data presents various challenges resulting from the “...
Outlier detection in high-dimensional datasets is a fundamental and challenging problem across disci...
Outlier detection in high-dimensional datasets is a fundamental and challenging problem across disci...
Distance-based outlier detection is an important data mining technique that finds abnormal data obje...
Distance-based outlier detection is an important data mining technique that finds abnormal data obje...
Accurate and robust three-dimensional reconstruction of objects allows for applications in many aspe...
Detecting outliers in data is an important problem with in-teresting applications in a myriad of dom...
Detecting outliers which are grossly different from or inconsistent with the remaining dataset is a ...
A novel approach to outlier detection and clustering on the ground of the distribution of distances ...
Detecting outliers which are grossly different from or inconsistent with the remaining dataset is a...
Outliers are eccentric data points with anomalous nature. Clustering with outliers has received a lo...
Distance-based outlier detection is widely adopted in many fields, e.g., data mining and machine lea...
This paper investigates outlier detection and reliable local saliency features (e.g. normal) estimat...
This study used different metric distances to estimate density functions in outlier detection. We em...
This study used different metric distances to estimate density functions in outlier detection. We em...
Abstract—Outlier detection in high-dimensional data presents various challenges resulting from the “...
Outlier detection in high-dimensional datasets is a fundamental and challenging problem across disci...
Outlier detection in high-dimensional datasets is a fundamental and challenging problem across disci...
Distance-based outlier detection is an important data mining technique that finds abnormal data obje...
Distance-based outlier detection is an important data mining technique that finds abnormal data obje...