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Robotic terrain classification based on convolutional and long short-term memory neural networks

Yile Hu

Year
2025
Citations
2

Abstract

Robotic mobility remains constrained by complex terrains and technological limitations, hindering real-world applications. This study presents a terrain classification framework integrating Fourier transform, adaptive filtering, and deep learning to enhance adaptability. Leveraging CNNs, LSTMs, and an attention mechanism, the approach improves feature fusion and classification accuracy. Evaluations on the Tampere University dataset demonstrate an 81 % classification accuracy, validating its effectiveness in terrain perception and autonomous navigation. The findings contribute to advancing robotic mobility in unstructured environments.

Keywords

Convolutional neural networkTerm (time)TerrainComputer scienceArtificial intelligenceLong short term memoryArtificial neural networkCartographyGeographyRecurrent neural network

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