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Dive into the research topics where Daniel McInerney is active.

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Featured researches published by Daniel McInerney.


In Approaches to Managing Disaster - Assessing Hazards, Emergencies and Disaster Impacts (14 March 2012), doi:10.5772/28441 | 2012

Comprehensive Monitoring of Wildfires in Europe: The European Forest Fire Information System (EFFIS)

Jesús San-Miguel-Ayanz; Ernst Schulte; Guido Schmuck; Andrea Camia; Peter Strobl; Giorgio Libertà; Cristiano Giovando; Roberto Boca; Fernando Sedano; Pieter Kempeneers; Daniel McInerney; Ceri Withmore; Sandra Santos de Oliveira; Marcos Rodrigues; Tracy Houston Durrant; Paolo Corti; Friderike Oehler; Lara Vilar; Giuseppe Amatulli

Fires are an integral component of ecosystem dynamics in European landscapes. However, uncontrolled fires cause large environmental and economic damages, especially in the Mediterranean region. On average, about 65000 fires occur in Europe every year, burning approximately half a million ha of wildland and forest areas; most of the burnt area, over 85%, is in the European Mediterranean region. Trends in number of fires and burnt areas in the Mediterranean region are presented in Fig. 1.


IEEE Transactions on Geoscience and Remote Sensing | 2012

Increasing Robustness of Postclassification Change Detection Using Time Series of Land Cover Maps

Pieter Kempeneers; Fernando Sedano; Peter Strobl; Daniel McInerney; Jesús San-Miguel-Ayanz

The monitoring of land cover requires that stable land cover classes be distinguished from changes over time. Within this paper, a postclassification method is presented that provides land cover change information, based on a time series of land cover maps. The method applies a kernel filter to sequential land cover maps. Under some basic assumptions, it shows robustness against classification errors. Despite seasonality, land cover changes often occur at a low temporal frequency (e.g., maximum once every 5-10 years). If land cover maps are available more frequently, some of the information will become redundant (oversampling). The proposed method uses this redundancy for tolerating (nonsystematic) misclassifications. In order to demonstrate the benefits and limitations of the proposed method, analytical expressions have been derived. When compared to a simple postclassification comparison, one of the key strengths of the proposed approach is that it is able to improve both the overall and users accuracy of change, while also maintaining the same level of producers accuracy. As a case study, MODerate Resolution Imaging Spectroradiometer remote sensing data from 2006-2010 were classified into forest (F)/nonforest (NF) at pan-European scale. Promising results were obtained for detecting forest loss due to natural disasters. Quality was assessed using burnt area maps in southern Europe and a forest damage report after a windstorm in France. Results indicated a considerable reduction of change detection errors, confirming the theoretical results.


Remote Sensing | 2012

Increasing Spatial Detail of Burned Scar Maps Using IRS‑AWiFS Data for Mediterranean Europe

Fernando Sedano; Pieter Kempeneers; Peter Strobl; Daniel McInerney; Jesús San Miguel

Abstract: A two stage burned scar detection approach is applied to produce a burned scar map for Mediterranean Europe using IRS-AWiFS imagery acquired at the end of the 2009 fire season. The first stage identified burned scar seeds based on a learning algorithm (Artificial Neural Network) coupled with a bootstrap aggregation process. The second stage implemented a region growing process to extend the area of the burned scars. Several ancillary datasets were used for the accuracy assessment and a final visual check was performed to refine the burned scar product. Training data for the learning algorithm were obtained from MODIS-based polygons, which were generated by the Rapid Damage Assessment module of the European Forest Fire Information System. The map produced from this research is the first attempt to increase the spatial detail of current burned scar maps for the Mediterranean region. The map has been analyzed and compared to existing burned area polygons from the European Forest Fire Information System. The comparison showed that the IRS-AWiFS-based burned scar map improved the delineation of burn scars; in addition the process identified a number of small burned scars that were not detected on lower resolution sensor data. Nonetheless, the results do not clearly support the improved capability for the detection of smaller burned scars. A number of reasons can be provided for the under-detection of burned scars, these include: the lack of a full coverage and cloud free imagery, the time lag between forest fires and image acquisition date and the occurrence of fires after the image acquisition dates. On the other hand, the limited


IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing | 2013

Accuracy Assessment of a Remote Sensing-Based, Pan-European Forest Cover Map Using Multi-Country National Forest Inventory Data

Pieter Kempeneers; Daniel McInerney; Fernando Sedano; Javier Gallego; Peter Strobl; Simon Kay; Kari T. Korhonen; Jesús San-Miguel-Ayanz

A pan-European forest cover map (FMAP2006) was produced using a novel automated classification approach using remotely sensed data from fine resolution satellite instruments. In contrast to previous classification accuracy assessments of such continental scale land cover products, the current study aimed for a reliable assessment at different geographical levels: pan-European, regional and local level. A unique data set consisting of detailed field inventory plots was provided via a collaboration with the national forest inventories (NFIs) in Europe. Close to 900,000 field plots were available for the assessment. The fine spatial resolution of the FMAP2006 facilitated the label assignment of the field plots to subsets of mapped pixels for the accuracy assessment process, thereby overcoming scale and definition difficulties encountered in previous studies with coarser resolution products. An overall accuracy of 88% was achieved at pan-European level based on the field plots of the NFIs. It is demonstrated that important differences exist for the class accuracies in different geographical regions, particularly at the regional and local level.


(2014), doi:10.1007/978-3-319-01824-9 | 2014

Open Source Geospatial Tools: Applications in Earth Observation

Daniel McInerney; Pieter Kempeneers

This book focuses on the use of open source software for geospatial analysis. It demonstrates the effectiveness of the command line interface for handling both vector, raster and 3D geospatial data. Appropriate open-source tools for data processing are clearly explained and discusses how they can be used to solve everyday tasks. A series of fully worked case studies are presented including vector spatial analysis, remote sensing data analysis, landcover classification and LiDAR processing. A hands-on introduction to the application programming interface (API) of GDAL/OGR in Python/C++ is provided for readers who want to extend existing tools and/or develop their own software.


Atmospheric Chemistry and Physics | 2012

How much CO was emitted by the 2010 fires around Moscow

M. Krol; Wouter Peters; P. Hooghiemstra; Michael George; Cathy Clerbaux; Daniel Hurtmans; Daniel McInerney; Fernando Sedano; P. Bergamaschi; M. El Hajj; Johannes W. Kaiser; Daniel Fisher; V. Yershov; Jan-Peter Muller


Photogrammetric Engineering and Remote Sensing | 2013

Design and function of the European Forest Fire Information System

Daniel McInerney; Jesús San-Miguel-Ayanz; Paolo Corti; Ceri Whitmore; Cristiano Giovando; Andrea Camia


MPRA Paper | 2013

Free and Open Source Software underpinning the European Forest Data Centre

Dario Rodriguez Aseretto; Margherita Di Leo; Daniele de Rigo; Paolo Corti; Daniel McInerney; Andrea Camia; Jesús San-Miguel-Ayanz


Archive | 2013

Copyright c 2013 Dario Rodriguez-Aseretto, Margherita Di Leo, Daniele de Rigo,

Paolo Corti; Daniel McInerney; Andrea Camia; Di Leo; San Miguel-Ayanz


MPRA Paper | 2013

Toward open science at the European scale: geospatial semantic array programming for integrated environmental modelling

Daniele de Rigo; Paolo Corti; Giovanni Caudullo; Daniel McInerney; Margherita Di Leo; Jesús San-Miguel-Ayanz

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Pieter Kempeneers

Flemish Institute for Technological Research

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Cathy Clerbaux

Université libre de Bruxelles

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Daniel Hurtmans

Université libre de Bruxelles

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