Survey on multi-output learning
The aim of multi-output learning is to simultaneously predict multiple outputs given an input.
It is an important learning problem for decision-making since making decisions in the real …
It is an important learning problem for decision-making since making decisions in the real …
New frontiers in spectral-spatial hyperspectral image classification: The latest advances based on mathematical morphology, Markov random fields, segmentation …
In recent years, airborne and spaceborne hyperspectral imaging systems have advanced in
terms of spectral and spatial resolution, which makes the data sets they produce a valuable …
terms of spectral and spatial resolution, which makes the data sets they produce a valuable …
Adaptive morphological reconstruction for seeded image segmentation
Morphological reconstruction (MR) is often employed by seeded image segmentation
algorithms such as watershed transform and power watershed, as it is able to filter out seeds …
algorithms such as watershed transform and power watershed, as it is able to filter out seeds …
[HTML][HTML] Document image analysis and recognition: a survey
AE Igorevna, BK Bulatovich, ND Petrovich… - Компьютерная …, 2022 - cyberleninka.ru
This paper analyzes the problems of document image recognition and the existing solutions.
Document recognition algorithms have been studied for quite a long time, but despite this …
Document recognition algorithms have been studied for quite a long time, but despite this …
Ship detection in SAR images based on maxtree representation and graph signal processing
This paper discusses an image processing architecture and tools to address the problem of
ship detection in synthetic-aperture radar images. The detection strategy relies on a tree …
ship detection in synthetic-aperture radar images. The detection strategy relies on a tree …
Multilevel building detection framework in remote sensing images based on convolutional neural networks
In this paper, we propose a hierarchical building detection framework based on deep
learning model, which focuses on accurately detecting buildings from remote sensing …
learning model, which focuses on accurately detecting buildings from remote sensing …
Evaluation of hierarchical watersheds
This paper aims to understand the practical features of hierarchies of morphological
segmentations, namely the quasi-flat zones hierarchy and watershed hierarchies, and to …
segmentations, namely the quasi-flat zones hierarchy and watershed hierarchies, and to …
Learning topology: bridging computational topology and machine learning
Topology is a classical branch of mathematics, born essentially from Euler's studies in the
XVII century, which deals with the abstract notion of shape and geometry. Last decades …
XVII century, which deals with the abstract notion of shape and geometry. Last decades …
Seek: A framework of superpixel learning with cnn features for unsupervised segmentation
Supervised semantic segmentation algorithms have been a hot area of exploration recently,
but now the attention is being drawn towards completely unsupervised semantic …
but now the attention is being drawn towards completely unsupervised semantic …
View-Consistent Hierarchical 3D Segmentation Using Ultrametric Feature Fields
Large-scale vision foundation models such as Segment Anything (SAM) demonstrate
impressive performance in zero-shot image segmentation at multiple levels of granularity …
impressive performance in zero-shot image segmentation at multiple levels of granularity …