Litcius/Paper detail

CloudLSTM: A Recurrent Neural Model for Spatiotemporal Point-cloud Stream Forecasting

Chaoyun Zhang, Marco Fiore, Iain Murray, Paul Patras

2021Proceedings of the AAAI Conference on Artificial Intelligence31 citationsDOIOpen Access PDF

Abstract

This paper introduces CloudLSTM, a new branch of recurrent neural models tailored to forecasting over data streams generated by geospatial point-cloud sources. We design a Dynamic Point-cloud Convolution (DConv) operator as the core component of CloudLSTMs, which performs convolution directly over point-clouds and extracts local spatial features from sets of neighboring points that surround different elements of the input. This operator maintains the permutation invariance of sequence-to-sequence learning frameworks, while representing neighboring correlations at each time step -- an important aspect in spatiotemporal predictive learning. The DConv operator resolves the grid-structural data requirements of existing spatiotemporal forecasting models and can be easily plugged into traditional LSTM architectures with sequence-to-sequence learning and attention mechanisms. We apply our proposed architecture to two representative, practical use cases that involve point-cloud streams, i.e. mobile service traffic forecasting and air quality indicator forecasting. Our results, obtained with real-world datasets collected in diverse scenarios for each use case, show that CloudLSTM delivers accurate long-term predictions, outperforming a variety of competitor neural network models.

Topics & Concepts

Computer sciencePoint cloudData miningCloud computingDeep learningSequence (biology)Operator (biology)Artificial intelligenceArtificial neural networkConvolutional neural networkGridMachine learningGeographyRepressorBiochemistryGeneticsTranscription factorOperating systemBiologyChemistryGeneGeodesyAir Quality Monitoring and ForecastingTraffic Prediction and Management TechniquesUrban Heat Island Mitigation
CloudLSTM: A Recurrent Neural Model for Spatiotemporal Point-cloud Stream Forecasting | Litcius