Добірка наукової літератури з теми "Paléoécologie – Éocène"
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Дисертації з теми "Paléoécologie – Éocène":
Carlsson, Veronica. "Artificial intelligence in radiolarian fossil identification : taxonomic, biostratigraphic and evolutionary implications." Electronic Thesis or Diss., Université de Lille (2022-....), 2023. http://www.theses.fr/2023ULILR092.
Micropaleontology is not only about studying the organisms themselves, rather understanding Earth's past environments, with applications ranging from biostratigraphy to paleoceanography as well as being able to study evolutionary changes within morphospecies in time and space. This field is facing numerous challenges, since the analysis of microfossils demands significant human effort and taxonomic expertise, often leading to inconsistencies in interpretations. This work focuses on the application of using Artificial Intelligence (AI), such as Artificial Neural Networks (ANNs), for automatic image recognition of tropical Atlantic middle Eocene radiolarians. Large datasets have been constructed, in order to train different neural networks and our results show that the neural networks can automatically classify several different classes of radiolarians down to a species level, as well as in many cases being able to identify closely related species and even evolutionary transition morphotypes. It has also been able to correctly identify less broken or blurry radiolarians. It was also successfully applied to automatic image recognition for a biostratigraphic work, which in general could detect more general ages or highly precise bio events. This work includes the use of the classical neural network approaches for analysing visual context such as Convolutional Neural Networks (CNNs) but also includes the use of Spiking Neural Networks (SNNs), which is not as commonly used for automatic image recognition, as CNNs. SNNs resulted in almost or equal amount of accuracy obtained as for CNNs, just that the use is more computational efficient and takes up less memory. There have also been some comparisons using traditional morphometric analyses, such as Linear Discrimination Analysis (LDA), giving approximately the same kind of results. Our research not only aims to simplify and speed up the analysis process but also helps in increasing the accuracy and consistency of micropaleontological interpretations, which eventually, will contribute to the high-resolution studies in order to understand Earth's past history
Legendre, Serge. "Les communautés de mammifères du paléogène (éocène supérieur et oligocène) d'Europe occidentale : structures, milieux et évolution." Montpellier 2, 1988. http://www.theses.fr/1988MON20036.
Lozouet, Pierre. "Le domaine atlantique européen au Cénozoïque moyen : diversité et évolution des gastéropodes." Paris, Muséum national d'histoire naturelle, 1997. http://www.theses.fr/1997MNHN0015.
Yakovleva, Alina. "Les dinoflagellés du Paléocène-Eocène de la Sibérie occidentale et des régions avoisinantes : application stratigraphique, paléoécologique et paléogéographique." Montpellier 2, 1999. http://www.theses.fr/1999MON20214.
Danilo, Laure. "Evolution des structures neurocrâniennes des Equoidea (Mammalia, Perissodactyla) européens paléogènes." Thesis, Montpellier 2, 2012. http://www.theses.fr/2012MON20190/document.
The Equoidea adaptive radiation still remains badly known, especially due to the ignorance of their phylogeny. The main indecision of these relationships concerns the pachynolophs, European Equoidea either approached to the Equidae or to the Palaeotheriidae. During a great part of the Eocene times, Europe was isolated, and, at the end of this period, has undergone strong climatic changes. That isolation ended at the « Grande Coupure » event, whereas an arid climate moved, and migrant faunas caused the extinction of many endemic groups. A basal European Equoidea, richly represented by well-preserved material, can support one of the latest phylogenetic hypotheses. However, commonly used characters to discuss this issue do not provide a clear and definitive answer.Therefore, this study aims to investigate on unexplored regions of these animals as the neurocranium through microtomography (CT), which allows access to non-destructive structures (brain, petrosal, bony labyrinth, and sinus).Furthermore phylogenetic interest these bodies may, through their functions, harbor paleoecological interest. Until now, few large-scale studies have focused on those structures in the Perissodactyla, with regard to most were anecdotal reports. As a prerequisite, a model study was performed on a wild current Equidae to better understand the variability of these unknown structures. For the first time, a large sample of European Equoidea has been scanned and their neurocranium structures virtually reconstructed in three-dimensions. A total of 20 species were sampled, covering the evolution of these animals from their origin to their extinction, for over 20 million years. Their skulls were scanned; their internal structures reconstructed compared and analyzed using cladistics. A new phylogenetic hypothesis provides intra Equoidea relationships and shows the relevance of neurocranium characters, while driving to consider a larger study. The Palaeotheriidae appears as a highly diverse group, particularly with regard to Eocene Equidae in North America, and characterized by a mosaic evolution. Their brain evolved earlier than that of contemporary faunas (Equidae, Cetartiodactyla, Carnivora); which may partially explain the strong diversification of that family, through the development of new adaptive strategies