5 research outputs found

    Backtracking Spatial Pyramid Pooling (SPP)-based Image Classifier for Weakly Supervised Top-down Salient Object Detection

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    Top-down saliency models produce a probability map that peaks at target locations specified by a task/goal such as object detection. They are usually trained in a fully supervised setting involving pixel-level annotations of objects. We propose a weakly supervised top-down saliency framework using only binary labels that indicate the presence/absence of an object in an image. First, the probabilistic contribution of each image region to the confidence of a CNN-based image classifier is computed through a backtracking strategy to produce top-down saliency. From a set of saliency maps of an image produced by fast bottom-up saliency approaches, we select the best saliency map suitable for the top-down task. The selected bottom-up saliency map is combined with the top-down saliency map. Features having high combined saliency are used to train a linear SVM classifier to estimate feature saliency. This is integrated with combined saliency and further refined through a multi-scale superpixel-averaging of saliency map. We evaluate the performance of the proposed weakly supervised topdown saliency and achieve comparable performance with fully supervised approaches. Experiments are carried out on seven challenging datasets and quantitative results are compared with 40 closely related approaches across 4 different applications.Comment: 14 pages, 7 figure

    Lucid Data Dreaming for Video Object Segmentation

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    Convolutional networks reach top quality in pixel-level video object segmentation but require a large amount of training data (1k~100k) to deliver such results. We propose a new training strategy which achieves state-of-the-art results across three evaluation datasets while using 20x~1000x less annotated data than competing methods. Our approach is suitable for both single and multiple object segmentation. Instead of using large training sets hoping to generalize across domains, we generate in-domain training data using the provided annotation on the first frame of each video to synthesize ("lucid dream") plausible future video frames. In-domain per-video training data allows us to train high quality appearance- and motion-based models, as well as tune the post-processing stage. This approach allows to reach competitive results even when training from only a single annotated frame, without ImageNet pre-training. Our results indicate that using a larger training set is not automatically better, and that for the video object segmentation task a smaller training set that is closer to the target domain is more effective. This changes the mindset regarding how many training samples and general "objectness" knowledge are required for the video object segmentation task.Comment: Accepted in International Journal of Computer Vision (IJCV

    Category Independent Object Proposals Using Quantum Superposition

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    A vast amount of digital images and videos are continually being generated and shared across the Internet. An important step towards utilizing this ‘big data’ and deducing meaningful information from its visual contents, is to detect the presence of objects belonging to a particular class in digital images. Earlier computer vision algorithms devised for this purpose exhaustively search the entire image space for detecting objects belonging to a particular class. Object proposals aim to reduce this search space by proposing probable locations of objects in the image beforehand. This paves the way for efficiently using more computationally expensive and sophisticated detection algorithms. Conventional approaches to generating object proposals have revolved around learning a scoring function from the characteristics of objects in ground truth annotations of images. In this thesis, we propose a novel category independent proposal generation framework that is unsupervised and inspired by the psycho-visual analysis of human visual system where the search for objects gradually transitions from the most salient parts of a scene to comparatively non-salient regions. We use a state-of-the-art visual saliency estimation technique which proposes a unique relationship between spectral clustering and quantum mechanics. We improve this method by exploiting for the first time, the quantum superposition principle, to extend the search of objects beyond the salient ones. We also propose an unsupervised scoring strategy that does not incorporate any prior information about the spatial, color or textural features of objects. Experimental results have proved that our proposed methodology achieves comparable results with the contemporary state-of-the-art methods. Our unsupervised scoring strategy is shown to outperform, in some cases, the supervised frameworks employed by other methods. Moreover, it also enables us to achieve a three-fold decrease in the number of proposals while keeping the loss of recall to less than 3%. The success of our proposed methodology opens the door to a research direction where quantum mechanical principles can be utilized to enable computer vision algorithms to find objects in digital images without having any prior knowledge about them

    Learning to segment in images and videos with different forms of supervision

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    Much progress has been made in image and video segmentation over the last years. To a large extent, the success can be attributed to the strong appearance models completely learned from data, in particular using deep learning methods. However, to perform best these methods require large representative datasets for training with expensive pixel-level annotations, which in case of videos are prohibitive to obtain. Therefore, there is a need to relax this constraint and to consider alternative forms of supervision, which are easier and cheaper to collect. In this thesis, we aim to develop algorithms for learning to segment in images and videos with different levels of supervision. First, we develop approaches for training convolutional networks with weaker forms of supervision, such as bounding boxes or image labels, for object boundary estimation and semantic/instance labelling tasks. We propose to generate pixel-level approximate groundtruth from these weaker forms of annotations to train a network, which allows to achieve high-quality results comparable to the full supervision quality without any modifications of the network architecture or the training procedure. Second, we address the problem of the excessive computational and memory costs inherent to solving video segmentation via graphs. We propose approaches to improve the runtime and memory efficiency as well as the output segmentation quality by learning from the available training data the best representation of the graph. In particular, we contribute with learning must-link constraints, the topology and edge weights of the graph as well as enhancing the graph nodes - superpixels - themselves. Third, we tackle the task of pixel-level object tracking and address the problem of the limited amount of densely annotated video data for training convolutional networks. We introduce an architecture which allows training with static images only and propose an elaborate data synthesis scheme which creates a large number of training examples close to the target domain from the given first frame mask. With the proposed techniques we show that densely annotated consequent video data is not necessary to achieve high-quality temporally coherent video segmentation results. In summary, this thesis advances the state of the art in weakly supervised image segmentation, graph-based video segmentation and pixel-level object tracking and contributes with the new ways of training convolutional networks with a limited amount of pixel-level annotated training data.In der Bild- und Video-Segmentierung wurden im Laufe der letzten Jahre große Fortschritte erzielt. Dieser Erfolg beruht weitgehend auf starken Appearance Models, die vollständig aus Daten gelernt werden, insbesondere mit Deep Learning Methoden. Für beste Performanz benötigen diese Methoden jedoch große repräsentative Datensätze für das Training mit teuren Annotationen auf Pixelebene, die bei Videos unerschwinglich sind. Deshalb ist es notwendig, diese Einschränkung zu überwinden und alternative Formen des überwachten Lernens in Erwägung zu ziehen, die einfacher und kostengünstiger zu sammeln sind. In dieser Arbeit wollen wir Algorithmen zur Segmentierung von Bildern und Videos mit verschiedenen Ebenen des überwachten Lernens entwickeln. Zunächst entwickeln wir Ansätze zum Training eines faltenden Netzwerkes (convolutional network) mit schwächeren Formen des überwachten Lernens, wie z.B. Begrenzungsrahmen oder Bildlabel, für Objektbegrenzungen und Semantik/Instanz- Klassifikationsaufgaben. Wir schlagen vor, aus diesen schwächeren Formen von Annotationen eine annähernde Ground Truth auf Pixelebene zu generieren, um ein Netzwerk zu trainieren, das hochwertige Ergebnisse ermöglicht, die qualitativ mit denen bei voll überwachtem Lernen vergleichbar sind, und dies ohne Änderung der Netzwerkarchitektur oder des Trainingsprozesses. Zweitens behandeln wir das Problem des beträchtlichen Rechenaufwands und Speicherbedarfs, das der Segmentierung von Videos mittels Graphen eigen ist. Wir schlagen Ansätze vor, um sowohl die Laufzeit und Speichereffizienz als auch die Qualität der Segmentierung zu verbessern, indem aus den verfügbaren Trainingsdaten die beste Darstellung des Graphen gelernt wird. Insbesondere leisten wir einen Beitrag zum Lernen mit must-link Bedingungen, zur Topologie und zu Kantengewichten des Graphen sowie zu verbesserten Superpixeln. Drittens gehen wir die Aufgabe des Objekt-Tracking auf Pixelebene an und befassen uns mit dem Problem der begrenzten Menge von dicht annotierten Videodaten zum Training eines faltenden Netzwerkes. Wir stellen eine Architektur vor, die das Training nur mit statischen Bildern ermöglicht, und schlagen ein aufwendiges Schema zur Datensynthese vor, das aus der gegebenen ersten Rahmenmaske eine große Anzahl von Trainingsbeispielen ähnlich der Zieldomäne schafft. Mit den vorgeschlagenen Techniken zeigen wir, dass dicht annotierte zusammenhängende Videodaten nicht erforderlich sind, um qualitativ hochwertige zeitlich kohärente Resultate der Segmentierung von Videos zu erhalten. Zusammenfassend lässt sich sagen, dass diese Arbeit den Stand der Technik in schwach überwachter Segmentierung von Bildern, graphenbasierter Segmentierung von Videos und Objekt-Tracking auf Pixelebene weiter entwickelt, und mit neuen Formen des Trainings faltender Netzwerke bei einer begrenzten Menge von annotierten Trainingsdaten auf Pixelebene einen Beitrag leistet
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