Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Andras Balazs is active.

Publication


Featured researches published by Andras Balazs.


Remote Sensing | 2018

Assessment of Classifiers and Remote Sensing Features of Hyperspectral Imagery and Stereo-Photogrammetric Point Clouds for Recognition of Tree Species in a Forest Area of High Species Diversity

Sakari Tuominen; R. Näsi; Eija Honkavaara; Andras Balazs; Teemu Hakala; Niko Viljanen; Ilkka Pölönen; Heikki Saari; Harri Ojanen

Recognition of tree species and geospatial information on tree species composition is essential for forest management. In this study, tree species recognition was examined using hyperspectral imagery from visible to near-infrared (VNIR) and short-wave infrared (SWIR) camera sensors in combination with a 3D photogrammetric canopy surface model based on RGB camera stereo-imagery. An arboretum with a diverse selection of 26 tree species from 14 genera was used as a test area. Aerial hyperspectral imagery and high spatial resolution photogrammetric color imagery were acquired from the test area using unmanned aerial vehicle (UAV) borne sensors. Hyperspectral imagery was processed to calibrated reflectance mosaics and was tested along with the mosaics based on original image digital number values (DN). Two alternative classifiers, a k nearest neighbor method (k-nn), combined with a genetic algorithm and a random forest method, were tested for predicting the tree species and genus, as well as for selecting an optimal set of remote sensing features for this task. The combination of VNIR, SWIR, and 3D features performed better than any of the data sets individually. Furthermore, the calibrated reflectance values performed better compared to uncorrected DN values. These trends were similar with both tested classifiers. Of the classifiers, the k-nn combined with the genetic algorithm provided consistently better results than the random forest algorithm. The best result was thus achieved using calibrated reflectance features from VNIR and SWIR imagery together with 3D point cloud features; the proportion of correctly-classified trees was 0.823 for tree species and 0.869 for tree genus.


Proceedings of SPIE | 2012

Methods for estimating forest stem volumes by tree species using digital surface model and CIR images taken from light UAS

Heikki Salo; Ville Tirronen; Ilkka Pölönen; Sakari Tuominen; Andras Balazs; Jan Heikkilä; Heikki Saari

In this paper we consider methods for estimating forest tree stem volumes by species using images taken from light unmanned aircraft systems (UAS). Instead of using LiDAR and additional multiband imagery a color infrared camera mounted to a light UAS is used to acquire both imagery and the DSM of target area. The goal of this study is to accurately estimate tree stem volumes in three classes. The status of the ongoing work is described and an initial method for delineating and classifying treetops is presented.


Remote Sensing of Environment | 2016

Effects of positional errors in model-assisted and model-based estimation of growing stock volume

Svetlana Saarela; Sebastian Schnell; Sakari Tuominen; Andras Balazs; Juha Hyyppä; Anton Grafström; Göran Ståhl


Silva Fennica | 2015

Unmanned aerial system imagery and photogrammetric canopy height data in area-based estimation of forest variables

Sakari Tuominen; Andras Balazs; Heikki Saari; Ilkka Pölönen; Janne Sarkeala; Risto Viitala


Silva Fennica | 2017

Hyperspectral UAV-imagery and photogrammetric canopy height model in estimating forest stand variables

Sakari Tuominen; Andras Balazs; Eija Honkavaara; Ilkka Pölönen; Heikki Saari; Teemu Hakala; Niko Viljanen


Silva Fennica | 2017

Improving Finnish Multi-Source National Forest Inventory by 3D aerial imaging

Sakari Tuominen; Timo Pitkänen; Andras Balazs; Annika Kangas


Archive | 2017

Improving Multi-Source National Forest Inventory by 3D aerial imaging

Sakari Tuominen; Timo Pitkänen; Andras Balazs; Annika Kangas


Metsätieteen aikakauskirja | 2017

Monilähteisen valtakunnan metsien inventoinnin kehittäminen 3D-ilmakuva-aineiston avulla

Sakari Tuominen; Timo Pitkänen; Andras Balazs; Annika Kangas


Metsätieteen Aikakauskirja | 2017

Fotogrammetrisen 3D-latvusmallin ja hyperspektriaineiston käyttö aluetason puustotulkinnassa

Sakari Tuominen; Andras Balazs; Eija Honkavaara; Ilkka Pölönen; Heikki Saari; Teemu Hakala; Niko Viljanen


ISPRS - International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences | 2017

Tree species recognition in species rich area using UAV-borne hyperspectral imagery and stereo-photogrammetric point cloud

Sakari Tuominen; R. Näsi; E. Honkavaara; Andras Balazs; T. Hakala; N. Viljanen; Ilkka Pölönen; Heikki Saari; J. Reinikainen

Collaboration


Dive into the Andras Balazs's collaboration.

Top Co-Authors

Avatar

Sakari Tuominen

Finnish Forest Research Institute

View shared research outputs
Top Co-Authors

Avatar

Pekka Hyvönen

Finnish Forest Research Institute

View shared research outputs
Top Co-Authors

Avatar

Heikki Saari

VTT Technical Research Centre of Finland

View shared research outputs
Top Co-Authors

Avatar

Ilkka Pölönen

University of Jyväskylä

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Eija Honkavaara

Finnish Geodetic Institute

View shared research outputs
Top Co-Authors

Avatar

Niko Viljanen

Finnish Geodetic Institute

View shared research outputs
Top Co-Authors

Avatar

Teemu Hakala

Finnish Geodetic Institute

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Ilkka Pölönen

University of Jyväskylä

View shared research outputs
Researchain Logo
Decentralizing Knowledge