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Fuzzy tagging and processing of semantic vagueness for crowd-sourcing public perceptions of environmental change

Research output: Contribution in Book/Report/Proceedings - With ISBN/ISSNConference contribution/Paperpeer-review

Published

Standard

Fuzzy tagging and processing of semantic vagueness for crowd-sourcing public perceptions of environmental change. / Sanchez-Trigueros, Fernando; Carver, Stephen; Huck, Jonny et al.
Digital conservation: understanding the impacts of digital technology on nature conservation. 2014.

Research output: Contribution in Book/Report/Proceedings - With ISBN/ISSNConference contribution/Paperpeer-review

Harvard

Sanchez-Trigueros, F, Carver, S, Huck, J, Matt, R, McBride, B, Moon Stumpff, L & Watson, A 2014, Fuzzy tagging and processing of semantic vagueness for crowd-sourcing public perceptions of environmental change. in Digital conservation: understanding the impacts of digital technology on nature conservation.

APA

Sanchez-Trigueros, F., Carver, S., Huck, J., Matt, R., McBride, B., Moon Stumpff, L., & Watson, A. (2014). Fuzzy tagging and processing of semantic vagueness for crowd-sourcing public perceptions of environmental change. In Digital conservation: understanding the impacts of digital technology on nature conservation

Vancouver

Sanchez-Trigueros F, Carver S, Huck J, Matt R, McBride B, Moon Stumpff L et al. Fuzzy tagging and processing of semantic vagueness for crowd-sourcing public perceptions of environmental change. In Digital conservation: understanding the impacts of digital technology on nature conservation. 2014

Author

Sanchez-Trigueros, Fernando ; Carver, Stephen ; Huck, Jonny et al. / Fuzzy tagging and processing of semantic vagueness for crowd-sourcing public perceptions of environmental change. Digital conservation: understanding the impacts of digital technology on nature conservation. 2014.

Bibtex

@inproceedings{6c5366182c7b4d1089a6c19116a8a625,
title = "Fuzzy tagging and processing of semantic vagueness for crowd-sourcing public perceptions of environmental change",
abstract = "In this presentation we illustrate the application of fuzzy tagging and a {"}spray and say{"} survey method for the documentation of community-based perceptions of environmental processes. Spatial data collection by fuzzy tagging takes account of geospatial vagueness on locating phenomena, so it moves from point and polygon abstractions through the {"}spraying{"} of places towards heat maps of spray incidence. Additionally, the {"}spray and say{"} mechanism allows the interviewee to add comments about tagged places to add context and qualifications to these spatial patterns. The grid-based Tagger (Waters and Evans, 2003; Evans and Waters, 2007) and its Map-Me PPGIS vector-adaption (Huck and Carver, 2012) are pioneering instances of both approaches.Post-processing of {"}spray and say{"} data typically involves the treatment of the spatiotemporal dimension, text data and measures of processes co-located with tagged sites (e.g. terrain models or pollution indexes). To proceed with an integral analysis by which all such dimensions can be jointly taken into account, we combine Artificial Intelligence techniques, Natural Language Processing (NLP) and data mining for the coupling of GIS and linguistic functionality in Information Systems capable of storing, managing, retrieving, visualizing and analyzing complex multimodal data.We present an application of the Map-Me tool, of a multimodal Information System and of an NLP-based query language to a case study on public perceptions of environmental change on the Flathead Indian Reservation (Montana), focusing on the effects of fire suppression in fire-adapted ecosystems and on the restoration of prescribed fire as perceived by tribal and non-tribal residents. The demographic, semantic and spatia properties of responses show different tagging behaviours between tribal and non-tribal residents that positively perceive the potential reintroduction of prescribed fire, depicting opposing patterns with regard to the geographical subregions and land-use categories that these cohorts tend to tag. We conclude with suggestions as to how this approach might be applied across a range of conservation projects to both ground truth and validate traditional models and survey techniques.",
author = "Fernando Sanchez-Trigueros and Stephen Carver and Jonny Huck and Roian Matt and Brooke McBride and {Moon Stumpff}, Linda and Alan Watson",
year = "2014",
month = may,
language = "English",
booktitle = "Digital conservation",

}

RIS

TY - GEN

T1 - Fuzzy tagging and processing of semantic vagueness for crowd-sourcing public perceptions of environmental change

AU - Sanchez-Trigueros, Fernando

AU - Carver, Stephen

AU - Huck, Jonny

AU - Matt, Roian

AU - McBride, Brooke

AU - Moon Stumpff, Linda

AU - Watson, Alan

PY - 2014/5

Y1 - 2014/5

N2 - In this presentation we illustrate the application of fuzzy tagging and a "spray and say" survey method for the documentation of community-based perceptions of environmental processes. Spatial data collection by fuzzy tagging takes account of geospatial vagueness on locating phenomena, so it moves from point and polygon abstractions through the "spraying" of places towards heat maps of spray incidence. Additionally, the "spray and say" mechanism allows the interviewee to add comments about tagged places to add context and qualifications to these spatial patterns. The grid-based Tagger (Waters and Evans, 2003; Evans and Waters, 2007) and its Map-Me PPGIS vector-adaption (Huck and Carver, 2012) are pioneering instances of both approaches.Post-processing of "spray and say" data typically involves the treatment of the spatiotemporal dimension, text data and measures of processes co-located with tagged sites (e.g. terrain models or pollution indexes). To proceed with an integral analysis by which all such dimensions can be jointly taken into account, we combine Artificial Intelligence techniques, Natural Language Processing (NLP) and data mining for the coupling of GIS and linguistic functionality in Information Systems capable of storing, managing, retrieving, visualizing and analyzing complex multimodal data.We present an application of the Map-Me tool, of a multimodal Information System and of an NLP-based query language to a case study on public perceptions of environmental change on the Flathead Indian Reservation (Montana), focusing on the effects of fire suppression in fire-adapted ecosystems and on the restoration of prescribed fire as perceived by tribal and non-tribal residents. The demographic, semantic and spatia properties of responses show different tagging behaviours between tribal and non-tribal residents that positively perceive the potential reintroduction of prescribed fire, depicting opposing patterns with regard to the geographical subregions and land-use categories that these cohorts tend to tag. We conclude with suggestions as to how this approach might be applied across a range of conservation projects to both ground truth and validate traditional models and survey techniques.

AB - In this presentation we illustrate the application of fuzzy tagging and a "spray and say" survey method for the documentation of community-based perceptions of environmental processes. Spatial data collection by fuzzy tagging takes account of geospatial vagueness on locating phenomena, so it moves from point and polygon abstractions through the "spraying" of places towards heat maps of spray incidence. Additionally, the "spray and say" mechanism allows the interviewee to add comments about tagged places to add context and qualifications to these spatial patterns. The grid-based Tagger (Waters and Evans, 2003; Evans and Waters, 2007) and its Map-Me PPGIS vector-adaption (Huck and Carver, 2012) are pioneering instances of both approaches.Post-processing of "spray and say" data typically involves the treatment of the spatiotemporal dimension, text data and measures of processes co-located with tagged sites (e.g. terrain models or pollution indexes). To proceed with an integral analysis by which all such dimensions can be jointly taken into account, we combine Artificial Intelligence techniques, Natural Language Processing (NLP) and data mining for the coupling of GIS and linguistic functionality in Information Systems capable of storing, managing, retrieving, visualizing and analyzing complex multimodal data.We present an application of the Map-Me tool, of a multimodal Information System and of an NLP-based query language to a case study on public perceptions of environmental change on the Flathead Indian Reservation (Montana), focusing on the effects of fire suppression in fire-adapted ecosystems and on the restoration of prescribed fire as perceived by tribal and non-tribal residents. The demographic, semantic and spatia properties of responses show different tagging behaviours between tribal and non-tribal residents that positively perceive the potential reintroduction of prescribed fire, depicting opposing patterns with regard to the geographical subregions and land-use categories that these cohorts tend to tag. We conclude with suggestions as to how this approach might be applied across a range of conservation projects to both ground truth and validate traditional models and survey techniques.

M3 - Conference contribution/Paper

BT - Digital conservation

ER -