A TRANSFORMER-BASED APPROACH FOR EFFICIENT GEOMETRIC FEATURE EXTRACTION FROM VECTOR SHAPE DATA

A Transformer-Based Approach for Efficient Geometric Feature Extraction from Vector Shape Data

A Transformer-Based Approach for Efficient Geometric Feature Extraction from Vector Shape Data

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The extraction of shape features from vector elements is essential in cartography and geographic information science, supporting a range of intelligent processing tasks.Traditional methods rely on different machine learning algorithms tailored to specific types of line and polygon elements, limiting their general applicability.This study introduces a novel approach called “Pre-Trained Shape Feature Representations from Transformers (PSRT)”, Leg Protection which utilizes transformer encoders designed with three self-supervised pre-training tasks: coordinate masking prediction, coordinate offset correction, and coordinate sequence rearrangement.

This approach enables the extraction of general shape features applicable to both line and polygon elements, generating high-dimensional embedded feature vectors.These vectors facilitate downstream tasks like shape classification, pattern recognition, and cartographic generalization.Our experimental results show that PSRT can extract vector shape features effectively without needing labeled samples and is adaptable to various types of vector features.

Compared to the methods without pre-training, PSRT enhances training efficiency by over five times Siemens EH801FVB1E iQ300 79cm Induction Hob - Black and improves accuracy by 5–10% in tasks such as line element matching and polygon shape classification.This innovative approach offers a more unified, efficient solution for processing vector shape data across different applications.

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