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Segmentation and classification of individual tree crowns : in high spatial resolution aerial images /Erikson, Mats, January 2004 (has links) (PDF)
Diss. (sammanfattning) Uppsala : Sveriges lantbruksuniversitet, 2004. / Härtill 5 uppsatser.
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Radical pluralism, ontological underdetermination, and the role of values in species classificationConix, Stijn January 2018 (has links)
The main claim of this thesis is that value-judgments should play a profound role in the construction and evaluation of species classifications. The arguments for this claim will be presented over the course of five chapters. These are divided into two main parts; part one, which consists of the two first chapters, presents an argument for a radical form of species pluralism; part two, which comprises the remaining chapters, discusses the implications of radical species pluralism for the role of values in species classification. The content of the five chapters is as follows. Chapter 1 starts with a discussion of the theoretical assumptions concerning species and natural kinds that form the broad framework within which the arguments of the thesis are placed. The aim of this chapter is to introduce a set of relatively uncontroversial assumptions that frame the rest of the thesis. On the basis of these assumptions, chapter 2 presents an argument for radical species pluralism. The chapter substantiates this argument with a broad range of examples, and compares this position to other forms of species pluralism. Chapter 3 returns to the main interest of the thesis, namely, the role of values in species classification. It introduces the notion of values and presents an argument for the value-ladenness of taxonomy on the basis of the considerations in the first two chapters. It then sketches three important views on values in science in the literature. Chapter 4 argues that the case presented in chapter 3 provides strong support for one of these views, called the ‘Aims View’, and against two other prominent views, called the ‘Epistemic Priority View’ and the ‘Value-Free Ideal’. The resulting view, in line with the Aims View, is that value-judgments should play a particularly substantial role in species classification. Chapter 5 then considers the popular assumption that these value-judgments in taxonomy commonly take the shape of generally accepted classificatory norms, and argues that this assumption is not tenable. Finally, a brief concluding chapter points at some implications of the claims and arguments in this thesis.
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An Application of Artificial Intelligence Techniques in Classifying Tree Species with LiDAR and Multi-Spectral Scanner DataPosadas, Benedict Kit A 09 August 2008 (has links)
Tree species identification is an important element in many forest resources applications such as wildlife habitat management, inventory, and forest damage assessment. Field data collection for large or mountainous areas is often cost prohibitive, and good estimates of the number and spatial arrangement of species or species groups cannot be obtained. Knowledge-based and neural network species classification models were constructed for remotely sensed data of conifer stands located in the lower mountain regions near McCall, Idaho, and compared to field data. Analyses for each modeling system were made based on multi-spectral sensor (MSS) data alone and MSS plus LiDAR (light detection and ranging) data. The neural network system produced models identifying five of six species with 41% to 88% producer accuracies and greater overall accuracies than the knowledge-based system. The neural network analysis that included a LiDAR derived elevation variable plus multi-spectral variables gave the best overall accuracy at 63%.
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Automatic mapping of urban tree species based on multi-source remotely sensed data / Cartographie automatique des espèces d'arbres en milieu urbain à partir de données de télédétection multi-sourceAval, Josselin 25 October 2018 (has links)
Avec l'expansion des zones urbaines, la pollution de l'air et l'effet d'îlot de chaleur augmentent, entraînant des problèmes de santé pour les habitants et des changements climatiques mondiaux. Dans ce contexte, les arbres urbains sont une ressource précieuse pour améliorer la qualité de l'air et promouvoir les îlot de fraîcheur. D'autre part, les canopées sont soumises à des conditions spécifiques dans l'environnement urbain, causant la propagation de maladies et la diminution de l'espérance de vie parmi les arbres. Cette thèse explore le potentiel de la télédétection pour la cartographie automatique des arbres urbains, de la détection des couronnes d'arbres à l'estimation des espèces, une tâche préliminaire essentielle pour la conception des futures villes vertes, et pour une surveillance efficace de la végétation. Fondé sur des données hyperspectrales aéroportées, panchromatiques et un modèle numérique de surface, le premier objectif de cette thèse consiste à tirer parti de plusieurs sources de données pour améliorer les cartes d'arbres urbains existants, en testant différentes stratégies de fusion (fusion de caractéristiques et fusion de décision). La nature des résultats nous a conduit à optimiser la complémentarité des sources. En particulier, le deuxième objectif est d'étudier en profondeur la richesse des données hyperspectrales, en développant une approche d'ensemble classifier fondée sur des indices de végétation, où les "classifier" sont spécifiques aux espèces. Enfin, la première partie a mis en évidence l'intérêt de distinguer les arbres de rue des autres structures d'arbres urbains. Dans un cadre de Marked Point Process, le troisième objectif est de détecter les arbres en alignement urbain. Par le premier objectif, cette thèse démontre que les données hyperspectrales sont le principal moteur de la précision de la prédiction des espèces. La stratégie de fusion au niveau de décision est la plus appropriée pour améliorer la performance en comparaison des données hyperspectrales seules, mais de légères améliorations sont obtenues (quelques %) en raison de la faible complémentarité des caractéristiques texturales et structurelles en plus des caractéristiques spectrales. L'approche d'ensemble classifier développée dans la deuxième partie permet de classer les espèces d'arbres à partir de références au sol, avec des améliorations significatives par rapport à une approche standard de classification au niveau des caractéristiques. Chaque classifieur d'espèces extrait reflète les attributs spectraux discriminants de l'espèce et peut être relié à l'expertise des botanistes. Enfin, les arbres de rue peuvent être cartographiés grâce au terme d'interaction des MPP proposé qui modélise leurs caractéristiques contextuelles (alignement et hauteurs similaires). De nombreuses améliorations doivent être explorées comme la délimitation plus précise de la couronne de l'arbre, et plusieurs perspectives sont envisageables après cette thèse, parmi lesquelles le suivi de l'état de santé des arbres urbains. / With the expansion of urban areas, air pollution and heat island effect are increasing, leading to state of health issues for the inhabitants and global climate changes. In this context, urban trees are a valuable resource for both improving air quality and promoting freshness islands. On the other hand, canopies are subject to specific conditions in the urban environment, causing the spread of diseases and life expectancy decreases among the trees. This thesis explores the potential of remote sensing for the automatic urban tree mapping, from the detection of the individual tree crowns to their species estimation, an essential preliminary task for designing the future green cities, and for an effective vegetation monitoring. Based on airborne hyperspectral, panchromatic and Digital Surface Model data, the first objective of this thesis consists in taking advantage of several data sources for improving the existing urban tree maps, by testing different fusion strategies (feature and decision level fusion). The nature of the results led us to optimize the complementarity of the sources. In particular, the second objective is to investigate deeply the richness of the hyperspectral data, by developing an ensemble classifiers approach based on vegetation indices, where the classifiers are species specific. Finally, the first part highlighted to interest of discriminating the street trees from the other structures of urban trees. In a Marked Point Process framework, the third objective is to detect trees in urban alignment. Through the first objective, this thesis demonstrates that the hyperspectral data are the main driver of the species prediction accuracy. The decision level fusion strategy is the most appropriate one for improving the performance in comparison the hyperspectral data alone, but slight improvements are obtained (a few percent) due to the low complementarity of textural and structural features in addition to the spectral ones. The ensemble classifiers approach developed in the second part allows the tree species to be classified from ground-based references, with significant improvements in comparison to a standard feature level classification approach. Each extracted species classifier reflects the discriminative spectral attributes of the species and can be related to the expertise of botanists. Finally, the street trees can be mapped thanks to the proposed MPP interaction term which models their contextual features (alignment and similar heights). Many improvements have to be explored such as the more accurate tree crown delineation, and several perspectives are conceivable after this thesis, among which the state of health monitoring of the urban trees.
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Classification of tree species from 3D point clouds using convolutional neural networksWiklander, Marcus January 2020 (has links)
In forest management, knowledge about a forest's distribution of tree species is key. Being able to automate tree species classification for large forest areas is of great interest, since it is tedious and costly labour doing it manually. In this project, the aim was to investigate the efficiency of classifying individual tree species (pine, spruce and deciduous forest) from 3D point clouds acquired by airborne laser scanning (ALS), using convolutional neural networks. Raw data consisted of 3D point clouds and photographic images of forests in northern Sweden, collected from a helicopter flying at low altitudes. The point cloud of each individual tree was connected to its representation in the photos, which allowed for manual labeling of training data to be used for training of convolutional neural networks. The training data consisted of labels and 2D projections created from the point clouds, represented as images. Two different convolutional neural networks were trained and tested; an adaptation of the LeNet architecture and the ResNet architecture. Both networks reached an accuracy close to 98 %, the LeNet adaptation having a slightly lower loss score for both validation and test data compared to that of ResNet. Confusion matrices for both networks showed similar F1 scores for all tree species, between 97 % and 98 %. The accuracies computed for both networks were found higher than those achieved in similar studies using ALS data to classify individual tree species. However, the results in this project were never tested against a true population sample to confirm the accuracy. To conclude, the use of convolutional neural networks is indeed an efficient method for classification of tree species, but further studies on unbiased data is needed to validate these results.
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Image Based Oak Species Classification Using Deep Learning ApproachShiferaw, Adisalem Hadush, Keklik, Alican January 2024 (has links)
Real-time, minimal human intervention, and scalable classification of oak species, specifically Quercus petraea and Quercus robur, are crucial for forest management, biodiversity conservation, and ecological monitoring. Traditional methods are labor-intensive and costly, motivating the exploration of automated solutions. This study addresses the research problem of developing an efficient and scalable classification system using deep learning techniques. We developed a Convolutional Neural Network (CNN) from scratch and enhanced its performance with segmentation, fusion, and data augmentation techniques. Using a dataset of 649 oak leaf images, our model achieved a classification accuracy of 69.30% with a standard deviation of 2.48% and demonstrated efficient real-time application with an average processing time of 25.53 milliseconds per image. These results demonstrate the potential of deep learning to automate and improve the two oak species identification. This research provides a valuable tool for ecological studies and conservation efforts.
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Using functional boxplots to visualize reflectance data and distinguish between areas of native grasses and invasive old world bluestems in a Kansas tall grass prairieHighland, Garth January 1900 (has links)
Master of Science / Department of Statistics / Leigh Murray / Using remotely sensed reflectance data is an appealing tool for controlling invasive species of grasses by rangeland managers. Recent developments in functional data analysis include the functional boxplot (FBP) which is shown here to be a useful tool in the visualization of reflectance data. Functional boxplots are a novel method of visually inspecting functional data and determining the presence of outliers in the data. Implementation and interpretation of FBPs are both straightforward and intuitive. The goal of this study is to examine the use of FBPs for visualizing reflectance data, and to determine the efficacy of using the FBP to distinguish between native tall grasses and invasive Old World Bluestem (OWB, Bothriochloa spp.) monocultures in a Kansas prairie. Validation trials were conducted in order to determine the stability of the FBP when used to analyze spectral data. FBPs were shown to be highly stable for use with both native and OWB grasses at all times and subsets of wavelengths tested. Identification trials were conducted by introducing a single OWB observation to a test set of native tall grass observations and constructing a FBP. Results indicate that using observations recorded early in the growing season, the functional boxplot is able to successfully identify the OWB observation as an outlier in a test set of native tall grass observations with an estimated probability 100% and 95.45% when considering the visible and cellular spectrums, respectively. A 95% lower bound for the probability of successfully identifying the OWB observation using the cellular spectrum in May is found to be 89.67%.
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Phylogenetic systematics of Scrapter (Hymenoptera: Anthophila: Colletidae).Davies, Gregory Bernard Peter. January 2006 (has links)
Scrapter Lepeletier de Saint-Fargeau & Audinet-Serville, 1828 (Hymenoptera: Aculeatea:
Anthophila: Colletidae) is a genus of solitary bees largely endemic to southern Africa. This
dissertation investigated the phylogenetic systematics of the genus. Eleven new species of
Scrapter are described, principally from the Succulent Karoo biome of South Africa, bringing
the total number of species in the genus to 42. An updated dichotomous key to facilitate
identification is provided. The previously unknown females of S. albifumus Eardley and S.
amplispinatus Eardley are also described. The genus is recorded from outside southern Africa
for the first time with the collection of S. nitidus (Friese) in Kenya. This constitutes a
significant range extension of the genus. The taxonomic status of five species described by
Cockerell in 1944, and subsequently overlooked, is addressed. They are all found to be
synonyms of other Scrapter species, except one, which is found to be a Ctenoplectrina species
(Apidae: Apinae: Ctenoplectrini). The new synonymies are: S. subincertus Cockerell = S.
niger Lepeletier de Saint-Fargeau & Audinet-Serville; S. brunneipennis Cockerell = S. niger
Lepeletier de Saint-Fargeau & Audinet-Serville; S. merescens Cockerell = S. leonis Cockerell;
S. sinophilus Cockerell = S. algoensis (Friese). Scrapter ugandica Cockerell becomes
Ctenoplectrina ugandica (Cockerell) as a new combination.
Investigation of selected morphological features (e.g. postmentum, facial fovea, galea)
revealed much diversity in Scrapter. The monophyly of Scrapter is not supported by
unambiguous apomorphies, but is defensible by the congruence of various qualitative
characters (e.g. premental fovea, T2 fovea, hindleg and sternal scopa in [females], two submarginal
cells).
A cladistic analysis using 25 morphological characters recovered numerous most
parsimonious trees under both equal- and successive-weighting. To aid in resolution, several
taxa known from only one sex or from very limited material, and with many unknown states,
were deleted from the matrix. Analysis using this reduced matrix under equal- and successive-weighting
resulted in better resolution, although with low consistency index values. Several
subclades were common to both cladograms, and likely represent monophyla. The low
consistency indices and general lack of unique synapomorphies upholding these subclades,
however, dictated against making any classificatory re-arrangements. / Thesis (M.Sc.)-University of KwaZulu-Natal, Pietermaritzburg, 2006.
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Photometric Methods for Autonomous Tree Species Classification and NIR Quality InspectionValieva, Inna January 2015 (has links)
In this paper the brief overview of methods available for individual tree stems quality evaluation and tree species classification has been performed. The use of Near Infrared photometry based on conifer’s canopy reflectance measurement in near infrared range of spectrum has been evaluated for the use in autonomous forest harvesting. Photometric method based on the image processing of the bark pattern has been proposed to perform classification between main construction timber tree species in Scandinavia: Norway spruce (Picea abies) and Scots Pine (Pinus sylvestris). Several feature extraction algorithms have been evaluated, resulting two methods selected: Statistical Analysis using gray level co-occurrence matrix and maximally stable extremal regions feature detector. Feedforward Neural Network with Backpropagation training algorithm and Support Vector Machine classifiers have been implemented and compared. The verification of the proposed algorithm has been performed by real-time testing.
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Systematics of Bonatea (Orchidaceae) : species boundaries and phylogeny.Ponsie, Mariaan E. January 2006 (has links)
Bonatea Willd. (Orchidaceae: Habernariinae) is a small genus confined
to the African continent and Arabia. Phylogenetic and morphometric
analyses were undertaken in order to evaluate phylogenetic
relationships and species delimitations within Bonatea. In the
phylogenetic analyses, little congruence was found between ITS and
matK molecular data, while morphological results were largely
congruent with those of the ITS region. There is little sequence
variation within and between Bonatea species, which could indicate a
recent and rapid radiation. The generic characters for Bonatea were reevaluated.
Bonatea is closely related to Habenaria but differs in having
a galeate middle rostellum lobe that is clearly separated from the
vertical anther thecae. By contrast, species of Habenaria have short
anthers that are slightly arcuate and flank the rostellum. Morphometric
analyses were used to determine taxon boundaries within the Bonatea
speciosa and Bonatea cassidea complexes, respectively. Principle
component and cluster analyses of morphological variation support the
recognition of Bonatea antennifera Rolfe, Bonatea boltonii (Harv.) Bolus
and Bonatea speciosa (L.f.) Willd. as distinct species. Morphological
evidence supports the inclusion of Bonatea porrecta (Bolus) Summerh.
and Bonatea volkensiana (Kraenzl.) Rolfe in the B. speciosa c1ade and
this is corroborated by molecular data for the former. Clinal variation in
petal lobe dimensions and colour across the distribution range of
Bonatea cassidea Sond. encompasses the taxon Bonatea saundersiae
(Harv.) T.Durand & Schinz, which is reduced to synonymy. Bonatea
saundersioides (Kraenzl. & Schltr.) Cortesi, the sister species to B.
cassidea, also exhibits colour variation in its petals. A revision of
Bonatea is presented recognizing 14 species. Bonatea eminii (Kraenzl.)
Rolfe was excluded due to insufficient information. Full descriptions are
provided with diagnostic characters and distributional maps. Bonatea
bracteata G.McDonald & McMurtry and Bonatea tentaculifera Summerh.
are removed from Bonatea based on their rostellum structure which is
inconsistent with the revised generic concept. Bonatea bracteata was
transferred as Habenaria transvaalensis Schltr. and B. tentaculifera was
renamed Habenaria bonateoides M.Ponsie, as the specific epithet is
currently occupied within Habenaria. / Thesis (M.Sc.)-University of KwaZulu-Natal, 2006.
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