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Erratum

Erratum: Zielewska-Büttner, K.; Adler, P.; Ehmann, M.; Braunisch, V. Automated Detection of Forest Gaps in Spruce Dominated Stands Using Canopy Height Models Derived from Stereo Aerial Imagery. Remote Sens. 2016, 8, 175

by
Katarzyna Zielewska-Büttner
1,*,
Petra Adler
2,
Michaela Ehmann
1 and
Veronika Braunisch
1,3
1
Department of Forest Nature Conservation, Forest Research Institute Baden-Württemberg (FVA), Wonnhaldestr. 4, D-79100 Freiburg, Germany
2
Department of Biometry and Information Sciences, Forest Research Institute Baden-Württemberg (FVA), Wonnhaldestr. 4, D-79100 Freiburg, Germany
3
Conservation Biology, Institute of Ecology and Evolution, University of Bern, Baltzerstrasse 6, CH-3012 Bern, Switzerland
*
Author to whom correspondence should be addressed.
Remote Sens. 2017, 9(5), 471; https://doi.org/10.3390/rs9050471
Submission received: 9 May 2017 / Revised: 9 May 2017 / Accepted: 10 May 2017 / Published: 12 May 2017
The authors would like to correct Table 6 and Table 8 and the relevant text of this article [1] as follows, as the column values in the tables were unintentionally exchanged. Please also note an updated correspondence E-mail.
* Correspondence: [email protected]
Abstract: Forest gaps are important structural elements in forest ecology to which various conservation-relevant, photophilic species are associated. To automatically map forest gaps and detect their changes over time, we developed a method based on Digital Surface Models (DSM) derived from stereoscopic aerial imagery and a LiDAR-based Digital Elevation Model (LiDAR DEM). Gaps were detected and delineated in relation to height and cover of the surrounding forest comparing data from two public flight campaigns (2009 and 2012) in a 1023-ha model region in the Northern Black Forest, Southwest Germany. The method was evaluated using an independent validation dataset obtained by visual stereo-interpretation. Gaps were automatically detected with an overall accuracy of 0.90 (2009) and 0.82 (2012). However, a very high user’s accuracy of more than 0.95 (both years) was counterbalanced by a producer’s accuracy of 0.84 (2009) and 0.72 (2012) as some gaps were not automatically detected. Accuracy was mainly dependent on the shadow occurrence and height of the surrounding forest with producer’s accuracies dropping to 0.70 (2009) and 0.52 (2012) in high stands (>8 m tree height). As one important step in the workflow, the class of open forest, an important feature for many forest species, was delineated with a very good overall accuracy of 0.92 (both years) with uncertainties occurring mostly in areas with intermediate canopy cover. Presence of complete or partial shadow and geometric limitations of stereo image matching were identified as the main sources of errors in the method performance, suggesting that images with a higher overlap and resolution and ameliorated image-matching algorithms provide the greatest potential for improvement.
3.3.1. Mapping Accuracy
The comparison of automatic gap-detection with the visually identified gaps revealed good agreement (Tables 5 and 6) with an overall accuracy of 0.90 and 0.82 in 2009 and 2012, respectively, and corresponding Kappa values of 0.80 and 0.66. User’s accuracies greater than 0.96 show that almost all automatically detected gaps were correctly classified. However, a fraction of the visually identified gaps were not captured during the automated mapping process, which is reflected in omission errors of 0.16 (2009) and 0.28 (2012). Method performance for the “non-gap” areas showed an opposite pattern with producer’s accuracies greater than user’s accuracies.
3.3.2. Variables Affecting Mapping Accuracy
Despite similar user’s accuracies of 0.96–0.98 and overall accuracies higher than 0.79, producer’s accuracy in high forest was much lower than in low forest with 0.70 in 2009 and 0.52 in 2012 (Tables 7 and 8).
We apologize for any inconvenience caused to the readers by these changes. The changes do not affect the scientific results. The manuscript will be updated and the original will remain available on the article webpage.

Reference

  1. Zielewska-Büttner, K.; Adler, P.; Ehmann, M.; Braunisch, V. Automated detection of forest gaps in spruce dominated stands using canopy height models derived from stereo aerial imagery. Remote Sens. 2016, 8, 175. [Google Scholar] [CrossRef]
Table 6. Mapping accuracies of automatically generated gaps derived from a comparison with the results of visual interpretation (accessed with 95% confidence interval (CI)).
Table 6. Mapping accuracies of automatically generated gaps derived from a comparison with the results of visual interpretation (accessed with 95% confidence interval (CI)).
Producer’s AccuracyUser’s AccuracyProducer’s AccuracyUser’s AccuracyKappaOverall Accuracy
GapGap“Non-Gap”“Non-Gap”with 95% CI
20090.840.970.970.840.800.90
20120.720.960.960.730.660.82
Table 8. Accuracy of the automated mapping of gap and “non-gap” areas assessed visually (with 95% of confidence interval (CI)) in low forest (LF) and high forest (HF) in 2009 and 2012.
Table 8. Accuracy of the automated mapping of gap and “non-gap” areas assessed visually (with 95% of confidence interval (CI)) in low forest (LF) and high forest (HF) in 2009 and 2012.
Forest Height ClassProducer’s AccuracyUser’s AccuracyProducer’s AccuracyUser’s AccuracyKappaOverall Accuracy
GapGap“Non-Gap”“Non-Gap”with 95% CI
2009LF0.930.980.890.680.730.93
HF0.700.980.980.870.730.88
2012LF0.850.980.940.590.930.86
HF0.520.960.960.760.840.79

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MDPI and ACS Style

Zielewska-Büttner, K.; Adler, P.; Ehmann, M.; Braunisch, V. Erratum: Zielewska-Büttner, K.; Adler, P.; Ehmann, M.; Braunisch, V. Automated Detection of Forest Gaps in Spruce Dominated Stands Using Canopy Height Models Derived from Stereo Aerial Imagery. Remote Sens. 2016, 8, 175. Remote Sens. 2017, 9, 471. https://doi.org/10.3390/rs9050471

AMA Style

Zielewska-Büttner K, Adler P, Ehmann M, Braunisch V. Erratum: Zielewska-Büttner, K.; Adler, P.; Ehmann, M.; Braunisch, V. Automated Detection of Forest Gaps in Spruce Dominated Stands Using Canopy Height Models Derived from Stereo Aerial Imagery. Remote Sens. 2016, 8, 175. Remote Sensing. 2017; 9(5):471. https://doi.org/10.3390/rs9050471

Chicago/Turabian Style

Zielewska-Büttner, Katarzyna, Petra Adler, Michaela Ehmann, and Veronika Braunisch. 2017. "Erratum: Zielewska-Büttner, K.; Adler, P.; Ehmann, M.; Braunisch, V. Automated Detection of Forest Gaps in Spruce Dominated Stands Using Canopy Height Models Derived from Stereo Aerial Imagery. Remote Sens. 2016, 8, 175" Remote Sensing 9, no. 5: 471. https://doi.org/10.3390/rs9050471

APA Style

Zielewska-Büttner, K., Adler, P., Ehmann, M., & Braunisch, V. (2017). Erratum: Zielewska-Büttner, K.; Adler, P.; Ehmann, M.; Braunisch, V. Automated Detection of Forest Gaps in Spruce Dominated Stands Using Canopy Height Models Derived from Stereo Aerial Imagery. Remote Sens. 2016, 8, 175. Remote Sensing, 9(5), 471. https://doi.org/10.3390/rs9050471

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