Point cloud classification, as one of the key techniques for point cloud data processing, is an important step for the application of point cloud data. However, single-point-based point cloud classification faces the challenge of poor robustness, and single-scale point clusters only consider a single neighborhood, leading to insufficient feature representation. In addition, numerous cluster-based classification methods require further development in constructing point clusters and extracting their features for representing point cloud objects. To address these issues, we present a point cloud classification algorithm based on multi-level aggregated features. In our method, we employ a multi-level point cluster construction approach based on MLPCS (Multi-level Point Cluster Segmentation), which divides the original point cloud into three different levels of point clusters by voxel downsampling and rescanning, Voxel-Meanshift, and Voxel-DBSCAN (Density-Based Spatial Clustering of Applications with Noise). The features for each level of point clusters are extracted and their representation is improved by adopting methods like max pooling, Bag of Words (BoW) and K-Means. The multi-level point cluster features are then aggregated and combined with a random forest classifier to achieve automatic classification of point clouds. Finally, we conducted ablation and comparison experiments to verify the effectiveness and advantages of the algorithm. Our method achieved classification accuracy/Kappa coefficient of 99.88 %/99.86 % and 93.44 %/83.61 % respectively in the experiments on two sets of large-scale outdoor scene data, and the ablation experiments confirmed the effectiveness of our algorithm.
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http://dx.doi.org/10.1016/j.heliyon.2025.e42623 | DOI Listing |
IEEE Trans Vis Comput Graph
March 2025
This paper presents a Task-Free eye-tracking dataset for Dynamic Point Clouds (TF-DPC) aimed at investigating visual attention. The dataset is composed of eye gaze and head movements collected from 24 participants observing 19 scanned dynamic point clouds in a Virtual Reality (VR) environment with 6 degrees of freedom. We compare the visual saliency maps generated from this dataset with those from a prior task-dependent experiment (focused on quality assessment) to explore how high-level tasks influence human visual attention.
View Article and Find Full Text PDFLangmuir
March 2025
Department of Chemistry and Materials Engineering, Kansai University, 3-3-35, Yamate-cho, Suita, Osaka 564-8680, Japan.
Associative phase separation (complex coacervation) in liquid-liquid phase separation (LLPS) involves the separation of multiple substances into concentrated and dilute phases by electrostatic interactions. Simple phase separation (simple coacervation) occurs when the hydrophilicity and hydrophobicity of a single molecule change dramatically in response to a specific stimulus. Simple coacervation arises from the lower critical solution temperature (LCST)- and upper critical solution temperature (UCST)-type phase separations in aqueous media containing temperature-responsive polymers.
View Article and Find Full Text PDFMol Pharm
March 2025
School of Pharmacy, University College Cork, College Road, Cork County, T12 R229 Cork , Ireland.
More than a decade since its introduction, the polymeric excipient Soluplus continues to receive considerable attention for its application in the development of amorphous solid dispersions (ASDs) and its utility as a solubilizer for drugs exhibiting solubility limited absorption. While it is well-recognized that Soluplus forms micelles, the impact of its lower critical solution temperature of approximately 40 °C remains an underexplored aspect. This study investigated the phase behavior of Soluplus in fasted-state simulated intestinal fluid (FaSSIF-V1).
View Article and Find Full Text PDFHeliyon
February 2025
Guangxi Key Laboratory of Forest Ecology and Conservation, Nanning, 530004, China.
Point cloud classification, as one of the key techniques for point cloud data processing, is an important step for the application of point cloud data. However, single-point-based point cloud classification faces the challenge of poor robustness, and single-scale point clusters only consider a single neighborhood, leading to insufficient feature representation. In addition, numerous cluster-based classification methods require further development in constructing point clusters and extracting their features for representing point cloud objects.
View Article and Find Full Text PDFSci Rep
March 2025
College of Information Science and Engineering, Northeastern University, Shenyang, 110000, China.
To address the computational challenges faced by edge devices using deep learning to process LiDAR point cloud data, this paper proposes a SLAM algorithm incorporating Top-K optimization to generate semantic descriptors and global semantic map for laser data efficiently. This approach aims to reduce computational complexity while enhancing processing speed. The algorithm extracts semantic information from LiDAR data, constructs two-dimensional semantic descriptors, and improves the robot's semantic understanding of its surrounding environment.
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