Semi-supervised segmentation of land cover images using nonlinear
canonical correlation analysis with multiple features and t-SNE
- URL: http://arxiv.org/abs/2401.12164v1
- Date: Mon, 22 Jan 2024 17:56:07 GMT
- Title: Semi-supervised segmentation of land cover images using nonlinear
canonical correlation analysis with multiple features and t-SNE
- Authors: Hong Wei, James Xiao, Yichao Zhang and Xia Hong
- Abstract summary: Image segmentation is a clustering task whereby each pixel is assigned a cluster label.
In this work, by resorting to label only a small quantity of pixels, a new semi-supervised segmentation approach is proposed.
The proposed semi-supervised RBF-CCA algorithm has been implemented on several remotely sensed multispectral images.
- Score: 1.7000283696243563
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Image segmentation is a clustering task whereby each pixel is assigned a
cluster label. Remote sensing data usually consists of multiple bands of
spectral images in which there exist semantically meaningful land cover
subregions, co-registered with other source data such as LIDAR (LIght Detection
And Ranging) data, where available. This suggests that, in order to account for
spatial correlation between pixels, a feature vector associated with each pixel
may be a vectorized tensor representing the multiple bands and a local patch as
appropriate. Similarly, multiple types of texture features based on a pixel's
local patch would also be beneficial for encoding locally statistical
information and spatial variations, without necessarily labelling pixel-wise a
large amount of ground truth, then training a supervised model, which is
sometimes impractical. In this work, by resorting to label only a small
quantity of pixels, a new semi-supervised segmentation approach is proposed.
Initially, over all pixels, an image data matrix is created in high dimensional
feature space. Then, t-SNE projects the high dimensional data onto 3D
embedding. By using radial basis functions as input features, which use the
labelled data samples as centres, to pair with the output class labels, a
modified canonical correlation analysis algorithm, referred to as RBF-CCA, is
introduced which learns the associated projection matrix via the small labelled
data set. The associated canonical variables, obtained for the full image, are
applied by k-means clustering algorithm. The proposed semi-supervised RBF-CCA
algorithm has been implemented on several remotely sensed multispectral images,
demonstrating excellent segmentation results.
Related papers
- A consensus-constrained parsimonious Gaussian mixture model for
clustering hyperspectral images [0.0]
Food engineers use hyperspectral images to classify the type and quality of a food sample.
In order to train these methods, every pixel in each training image needs to be labelled.
A consensus-constrained parsimonious Gaussian mixture model (ccPGMM) is proposed to label pixels in hyperspectral images.
arXiv Detail & Related papers (2024-03-05T22:23:43Z) - OsmLocator: locating overlapping scatter marks with a non-training
generative perspective [48.50108853199417]
Locating overlapping marks faces many difficulties such as no texture, less contextual information, hallow shape and tiny size.
Here, we formulate it as a optimization problem on clustering-based re-visualization from a non-training generative perspective.
We especially built a dataset named 2023 containing hundreds of scatter images with different markers and various levels of overlapping severity, and tested the proposed method and compared it to existing methods.
arXiv Detail & Related papers (2023-12-18T12:39:48Z) - CorrMatch: Label Propagation via Correlation Matching for
Semi-Supervised Semantic Segmentation [73.89509052503222]
This paper presents a simple but performant semi-supervised semantic segmentation approach, called CorrMatch.
We observe that the correlation maps not only enable clustering pixels of the same category easily but also contain good shape information.
We propose to conduct pixel propagation by modeling the pairwise similarities of pixels to spread the high-confidence pixels and dig out more.
Then, we perform region propagation to enhance the pseudo labels with accurate class-agnostic masks extracted from the correlation maps.
arXiv Detail & Related papers (2023-06-07T10:02:29Z) - Probabilistic Deep Metric Learning for Hyperspectral Image
Classification [91.5747859691553]
This paper proposes a probabilistic deep metric learning framework for hyperspectral image classification.
It aims to predict the category of each pixel for an image captured by hyperspectral sensors.
Our framework can be readily applied to existing hyperspectral image classification methods.
arXiv Detail & Related papers (2022-11-15T17:57:12Z) - Unsupervised Spatial-spectral Hyperspectral Image Reconstruction and
Clustering with Diffusion Geometry [6.279792995020646]
This work introduces the Spatial-Spectral Image Reconstruction and Clustering with Diffusion Geometry (DSIRC) algorithm for partitioning highly mixed hyperspectral images.
DSIRC locates spectrally correlated pixels within a data-adaptive spatial neighborhood and reconstructs that pixel's spectral signature using those of its neighbors.
Results indicate that incorporating spatial information through image reconstruction substantially improves the performance of pixel-wise clustering.
arXiv Detail & Related papers (2022-04-28T13:42:12Z) - Class Balanced PixelNet for Neurological Image Segmentation [20.56747443955369]
We propose an automatic brain tumor segmentation approach (e.g., PixelNet) using a pixel-level convolutional neural network (CNN)
The proposed model has achieved promising results in brain tumor and ischemic stroke segmentation datasets.
arXiv Detail & Related papers (2022-04-23T10:57:54Z) - Two-Stream Graph Convolutional Network for Intra-oral Scanner Image
Segmentation [133.02190910009384]
We propose a two-stream graph convolutional network (i.e., TSGCN) to handle inter-view confusion between different raw attributes.
Our TSGCN significantly outperforms state-of-the-art methods in 3D tooth (surface) segmentation.
arXiv Detail & Related papers (2022-04-19T10:41:09Z) - Superpixel Segmentation Based on Spatially Constrained Subspace
Clustering [57.76302397774641]
We consider each representative region with independent semantic information as a subspace, and formulate superpixel segmentation as a subspace clustering problem.
We show that a simple integration of superpixel segmentation with the conventional subspace clustering does not effectively work due to the spatial correlation of the pixels.
We propose a novel convex locality-constrained subspace clustering model that is able to constrain the spatial adjacent pixels with similar attributes to be clustered into a superpixel.
arXiv Detail & Related papers (2020-12-11T06:18:36Z) - Instance-Aware Graph Convolutional Network for Multi-Label
Classification [55.131166957803345]
Graph convolutional neural network (GCN) has effectively boosted the multi-label image recognition task.
We propose an instance-aware graph convolutional neural network (IA-GCN) framework for multi-label classification.
arXiv Detail & Related papers (2020-08-19T12:49:28Z) - Optimized Feature Space Learning for Generating Efficient Binary Codes
for Image Retrieval [9.470008343329892]
We propose an approach for learning low dimensional optimized feature space with minimum intra-class variance and maximum inter-class variance.
We binarize our generated feature vectors with the popular Iterative Quantization (ITQ) approach and also propose an ensemble network to generate binary codes of desired bit length for image retrieval.
arXiv Detail & Related papers (2020-01-30T15:30:31Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.