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  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
1

Sprite learning and object category recognition using invariant features

Allan, Moray January 2007 (has links)
This thesis explores the use of invariant features for learning sprites from image sequences, and for recognising object categories in images. A popular framework for the interpretation of image sequences is the layers or sprite model of e.g. Wang and Adelson (1994), Irani et al. (1994). Jojic and Frey (2001) provide a generative probabilistic model framework for this task, but their algorithm is slow as it needs to search over discretised transformations (e.g. translations, or affines) for each layer. We show that by using invariant features (e.g. Lowe’s SIFT features) and clustering their motions we can reduce or eliminate the search and thus learn the sprites much faster. The algorithm is demonstrated on example image sequences. We introduce the Generative Template of Features (GTF), a parts-based model for visual object category detection. The GTF consists of a number of parts, and for each part there is a corresponding spatial location distribution and a distribution over ‘visual words’ (clusters of invariant features). We evaluate the performance of the GTF model for object localisation as compared to other techniques, and show that such a relatively simple model can give state-of- the-art performance. We also discuss the connection of the GTF to Hough-transform-like methods for object localisation.
2

An Approach to Self-Supervised Object Localisation through Deep Learning Based Classification

Politov, Andrei 28 December 2021 (has links)
Deep learning has become ubiquitous in science and industry for classifying images or identifying patterns in data. The most widely used approach to training convolutional neural networks is supervised learning, which requires a large set of annotated data. To elude the high cost of collecting and annotating datasets, selfsupervised learning methods represent a promising way to learn the common functions of images and videos from large-scale unlabeled data without using humanannotated labels. This thesis provides the results of using self-supervised learning and explainable AI to localise objects in images from electron microscopes. The work used a synthetic geometric dataset and a synthetic pollen dataset. The classification was used as a pretext task. Different methods of explainable AI were applied: Grad-CAM and backpropagation-based approaches showed the lack of prospects; at the same time, the Extremal Perturbation function has shown efficiency. As a result of the downstream localisation task, the objects of interest were detected with competitive accuracy for one-class images. The advantages and limitations of the approach have been analysed. Directions for further work are proposed.
3

Contribution à la détection et à la reconnaissance d'objets dans les images / Contribution to detection and recognition of objects in images

Harzallah, Hedi 16 September 2011 (has links)
Cette thèse s'intéresse au problème de la reconnaissance d'objets dans les images vidéo et plus particulièrement à celui de leur localisation. Elle a été conduite dans le contexte d'une collaboration scientifique entre l'INRIA Rhône-Alpes et MBDA France. De ce fait, une attention particulière a été accordée à l’applicabilité des approches proposées aux images infra-rouges. La méthode de localisation proposée repose sur l'utilisation d'une fenêtre glissante incluant une cascade à deux étages qui, malgré sa simplicité, permet d'allier rapidité et précision. Le premier étage est un étage de filtrage rejetant la plupart des faux positifs au moyen d’un classifieur SVM linéaire. Le deuxième étage élimine les fausses détections laissées par le premier étage avec un classifieur SVM non-linéaire plus lent, mais plus performant. Les fenêtres sont représentées par des descripteurs HOG et Bag-of-words. La seconde contribution de la thèse réside dans une méthode permettant de combiner localisation d'objets et catégorisation d'images. Ceci permet, d'une part, de prendre en compte le contexte de l'image lors de la localisation des objets, et d'autre part de s'appuyer sur la structure géométrique des objets lors de la catégorisation des images. Cette méthode permet d'améliorer les performances pour les deux tâches et produit des détecteurs et classifieurs dont la performance dépasse celle de l'état de l'art. Finalement, nous nous penchons sur le problème de localisation de catégories d'objets similaires et proposons de décomposer la tâche de localisation d'objets en deux étapes. Une première étape de détection permet de trouver les objets sans déterminer leurs positions tandis qu’une seconde étape d’identification permet de prédire la catégorie de l'objet. Nous montrons que cela permet de limiter les confusions entre les classes, principal problème observé pour les catégories d'objets visuellement similaires. La thèse laisse une place importante à la validation expérimentale, conduites sur la base PASCAL VOC ainsi que sur des bases d’images spécifiquement réalisées pour la thèse. / This thesis addresses the problem of object recognition in images and more precisely the problem of object localization. It have been conducted in the context of a scientific collaboration between INRIA Rhônes-Alpes and MBDA France. Therefore, a particular attention was accorded to the applicability of the proposed approaches on infrared images. The localization method proposed here relies on the sliding windows mechanism combined with a two stage cascade that, despite its simplicity, allies rapidity and precision. The first stage is a filtering stage that rejects most of the false positives using a linear classifier. The second stage prunes the detections of the first classifier using a slower yet efficient non-linear classifier. Windows are represented with HOG and Bag-of-words descriptors. The second contribution of this thesis is a method that combines object localization and image categorization. This allows, on the one hand, to take into account context information in localization, and on the other hand, to rely on geometrical structure of objects while performing image categorization. This combination leads to a significant quality improvement and obtains performance superior to the state of the art for both tasks. Finally, we consider the problem of localizing visually similar object categories and suggest to decompose the task of object localization into two steps. The first is a detection step that allows to find objects without determining their category while the second step, an identification step, predicts the objects categories. We show that this approach limits inter-class confusion, which is the main difficulty faced when localizing visually similar object classes. This thesis accords an important place to experimental validation conducted on PASCAL VOC databases as well as other databases specifically introduced for the thesis.
4

Object Detection in Domain Specific Stereo-Analysed Satellite Images

Grahn, Fredrik, Nilsson, Kristian January 2019 (has links)
Given satellite images with accompanying pixel classifications and elevation data, we propose different solutions to object detection. The first method uses hierarchical clustering for segmentation and then employs different methods of classification. One of these classification methods used domain knowledge to classify objects while the other used Support Vector Machines. Additionally, a combination of three Support Vector Machines were used in a hierarchical structure which out-performed the regular Support Vector Machine method in most of the evaluation metrics. The second approach is more conventional with different types of Convolutional Neural Networks. A segmentation network was used as well as a few detection networks and different fusions between these. The Convolutional Neural Network approach proved to be the better of the two in terms of precision and recall but the clustering approach was not far behind. This work was done using a relatively small amount of data which potentially could have impacted the results of the Machine Learning models in a negative way.

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