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Robustno sledenje s konvolucijskimi nevronskimi mrežami
ID Bohte, Boštjan (Author), ID Kristan, Matej (Mentor) More about this mentor... This link opens in a new window

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PID: 20.500.12556/rul/6cdf43d6-be8f-499e-97c8-d396ff15c749

Abstract
Sledenje objektov je proces lokalizacije objekta(ov) skozi sekvenco slik. Mnogo uspešnih sledilnikov za sledenje uporablja konvolucijske nevronske mreže, ki so sposobne razpoznavati objekte na višjem abstraktnem nivoju. Poznamo kratkoročne in dolgoročne sledilnike, pri katerih se slednji razlikujejo po značilnosti, ki ob primeru odpovedi sledenja ponovno nastavi sledilnik. V našem delu smo se osredotočili na izboljšavo sledilnika, ki z uporabo konvolucijske nevronske mreže sicer doseže hitro in natančno sledenje, vendar nima možnosti dolgoročnega sledenja. Predlagamo nov sledilnik z implementirano detekcijo odpovedi sledenja. Ta napove verjetnost pravilnega oziroma nepravilnega trenutnega sledenja. Na podlagi te detekcije pa nato implementiramo detektor objekta, ki v primeru zaznane odpovedi sledenja poišče sledeni objekt na sliki in ponastavi sledilnik. S tem izpolnimo zahteve dolgoročnega sledilnika. Za še bolj robustno dolgoročno sledenje predlagamo tudi dva načina posodabljanja predloge. Pri prvem načinu posodabljamo predlogo s shranjevanjem predlog v vrsto, pri drugem pa s postopnim posodabljanjem predloge z novimi primeri. Na trenutno edini podatkovni zbirki za dolgoročno sledenje predlagani sledilnik dosega najboljše rezultate, ki so 24% boljši od trenutno najboljšega objavljenega sledilnika.

Language:Slovenian
Keywords:mreže, sledilnik, objekt, sledenje, detekcija, model
Work type:Master's thesis/paper
Organization:FRI - Faculty of Computer and Information Science
Year:2018
PID:20.500.12556/RUL-99782 This link opens in a new window
Publication date in RUL:15.02.2018
Views:1049
Downloads:499
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Secondary language

Language:English
Title:Robust tracking with convolutional neural networks
Abstract:
Visual object tracking is a process of object(s) localization through the sequence of images. Many successful trackers use convolutional neural networks for tracking. These networks are capable of recognizing object features on an abstract level. We can define trackers as short term and long term trackers with the latter having an additional function which reinitializes their tracking in case of a failure. In our work, we want to improve the tracker that uses convolutional neural network which is already accurate and fast but does not offer the possibility of a long term tracking. We propose a new tracker with a tracking failure detection. This detection predicts with plausibility if the tracker is tracking the object correctly or incorrectly. Based on implemented failure detection, we implement the object detection which finds the tracking object on the image and reinitializes the tracker in case of a predicted tracking failure. With these two features implemented, we fulfill the requirements for the long term tracker. For even more robust long term tracking we propose two methods of updating the template. With the first method, we save templates in an array while with the second method we gradually update the initial template with new examples. We scored the best result in the so far only existing database for long term tracking evaluation. The results are 24% better than those of the currently best published tracker.

Keywords:networks, tracker, object, tracking, detection, model

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