GeoAI'22 will offer a platform to discuss the latest trends, successes, grand challenges, and opportunities in the emerging field of geospatial artificial intelligence to provide actionable intelligence and power new geographic knowledge-informed scientific discoveries.
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Sensing overlapping geospatial communities from human movements using graph affiliation generation models
Geographical units densely connected by human movements can be treated as a geospatial community. Detecting geospatial communities in a mobility network reveals key characteristics of human movements and urban structures. Recent studies have found ...
Towards the intelligent era of spatial analysis and modeling
Geographic phenomena are considered complex due to the heterogeneous nature of spatial dependencies. It is impossible to specify a universal law described in statistical or physical languages that can perfectly characterize a real-world geographic ...
Incorporating spatial context for post-OCR in map images
Extracting text from historical maps using Optical Character Recognition (OCR) engines often results in partially or incorrectly recognized words due to complex map content. Previous work utilizes lexical-based approaches with linguistic context or ...
highway2vec: representing OpenStreetMap microregions with respect to their road network characteristics
Recent years brought advancements in using neural networks for representation learning of various language or visual phenomena. New methods freed data scientists from hand-crafting features for common tasks. Similarly, problems that require considering ...
SHGCN: a hypergraph-based deep learning model for spatiotemporal traffic flow prediction
Traffic flow prediction, as one of the prominent tasks in intelligent transportation systems, is challenging due to underlying complex spatiotemporal characteristics. Consideration of historical spatial and temporal dependencies is essential for the ...
Remote sensing visual question answering with a self-attention multi-modal encoder
Visual Question Answering (VQA) on remote sensing imagery can help non-expert users in extracting information from Earth observation data. Current approaches follow a neural encoder-decoder design, combining convolutional and recurrent encoders together ...
IM2City: image geo-localization via multi-modal learning
This study investigated multi-modal learning as a stand-alone solution to image geo-localization problems. Based on the successful trials on the contrastive language-image pre-training (CLIP) model, we developed GEo-localization Multi-modal (GEM) models,...
Real-time GeoAI for high-resolution mapping and segmentation of arctic permafrost features: the case of ice-wedge polygons
This paper introduces a real-time GeoAI workflow for large-scale image analysis and the segmentation of Arctic permafrost features at a fine-granularity. Very high-resolution (0.5m) commercial imagery is used in this analysis. To achieve real-time ...
Density-based cluster detection at multiple spatial scales via kullback-leibler divergence of reachability profiles
Density-based clustering methods are frequently used to define spatial clusters and outliers (noise) for location-only data. Different algorithms for solving this problem emerged over the past few decades, with their main difference being the numerical ...
Unsupervised historical map registration by a deformation neural network
Image registration that aligns multi-temporal or multi-source images is vital for tasks like change detection and image fusion. Thanks to the advance and large-scale practice of modern surveying methods, multi-temporal historical maps can be unlocked ...
Fine-grained location prediction of non geo-tagged tweets: a multi-view learning approach
Geotagged Social Media (GTSM) data, especially geotagged tweets are valuable sources of information for many important applications. Only small portions of geotagged tweets are available (less than 3%). Identifying tweet location is a challenging ...
SPEMI: normalizing spatial imbalance with spatial eminence transformer for citywide region embedding
Region embedding is a primary task for a wide variety of urban-related downstream applications. However, many existing embedding techniques neglected the fact that the regions in a city have been developed differently by many factors such as planning ...
Index Terms
- Proceedings of the 5th ACM SIGSPATIAL International Workshop on AI for Geographic Knowledge Discovery
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Acceptance Rates
Year | Submitted | Accepted | Rate |
---|---|---|---|
GeoAI '19 | 25 | 17 | 68% |
Overall | 25 | 17 | 68% |