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Gosto robotsko zlaganje objektov z minimizacijo polja predznačenih razdalj
ID Založnik, Izidor (Author), ID Mihelj, Matjaž (Mentor) More about this mentor... This link opens in a new window, ID Podobnik, Janez (Comentor)

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Abstract
Magistrsko delo obravnava problem avtomatiziranega gostega zlaganja objektov nepravilnih oblik v omejenem prostoru, ki predstavlja pomemben izziv v sodobnih industrijskih procesih. Zlaganje in razporejanje predmetov je pogosto monotono, fizično zahtevno in nagnjeno k napakam, hkrati pa ima neposreden vpliv na izkoristek prostora, količino odpadnega materiala in splošno učinkovitost proizvodnje. Poseben izziv predstavljajo situacije, v katerih objekti prihajajo zaporedno, njihove oblike pa niso znane vnaprej, kar onemogoča uporabo klasičnih globalnih optimizacijskih metod. Osrednji prispevek magistrske naloge je razvoj algoritma za sprotno (angl. online) zlaganje objektov, ki temelji na uporabi polj predznačenih razdalj (Signed Distance Field – SDF). Algoritem v vsakem koraku izdela združeno SDF-predstavitev delovnega prostora, ki upošteva robove odlagalne površine, že zložene objekte ter dodatne omejitve ali preference. Na tej osnovi se poiščejo potencialno ustrezni položaji, nato pa se z natančno oceno in upoštevanjem različnih orientacij določi lokalno optimalno lego novega objekta. Predlagan pristop omogoča delovanje na poljubno oblikovanih odlagalnih površinah ter obravnavo kompleksnih in nesimetričnih objektov. Poleg algoritma zlaganja delo vključuje tudi razvoj sistema robotskega vida, ki omogoča uporabo algoritma v realnem okolju. Za detekcijo objektov je uporabljen model Florence-2, za natančno segmentacijo pa model Segment Anything (SAM). Iz pridobljenih mask se izračunajo geometrijske lastnosti objektov, kot sta središče in orientacija, ter izdela oblak točk, ki služi nadaljnji obdelavi. Celoten sistem je integriran v robotsko aplikacijo, ki vključuje robotski manipulator, globinsko kamero in prijemalo. Učinkovitost razvitega algoritma je ovrednotena s časovnimi meritvami in primerjavo zapolnjenosti površine z obstoječimi pristopi. Rezultati kažejo, da algoritem dosega primerljivo ali boljšo zapolnjenost pri nepravilnih oblikah v primerjavi z sorodnimi metodami, ob tem pa ohranja razumno računsko zahtevnost, ki omogoča delovanje v realnem času. Delo tako dokazuje, da je SDF-pristop primerna osnova za fleksibilne in robustne sisteme avtomatiziranega zlaganja v industrijskih aplikacijah.

Language:Slovenian
Keywords:avtomatizirano zlaganje objektov, polje predznačenih razdalj (SDF), robotski vid, robotski manipulator
Work type:Master's thesis/paper
Typology:2.09 - Master's Thesis
Organization:FE - Faculty of Electrical Engineering
Year:2026
PID:20.500.12556/RUL-178426 This link opens in a new window
COBISS.SI-ID:267181571 This link opens in a new window
Publication date in RUL:27.01.2026
Views:379
Downloads:139
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Secondary language

Language:English
Title:Dense robot-based object packing via minimization of signed distance field
Abstract:
This master’s thesis addresses the problem of automated densly packing of irregularly shaped objects within a confined space, which represents a significant challenge in modern industrial environments. Object packing and placement tasks are often repetitive, physically demanding, and prone to errors, while at the same time having a direct impact on space utilization, material waste, and overall production efficiency. A particular difficulty arises in scenarios where objects arrive sequentially and their shapes are not known in advance, making conventional global optimization methods unsuitable. The main contribution of this thesis is the development of an online object packing algorithm based on Signed Distance Fields (SDF). At each step, a combined SDF representation of the workspace is constructed, incorporating the boundaries of the placement area, already placed objects, and additional constraints or preferences. Based on this representation, promising candidate locations are identified, after which a refined evaluation over multiple object orientations is performed to determine the locally optimal placement of the new object. The proposed approach supports arbitrarily shaped placement areas and enables robust handling of complex, non-symmetric object geometries. In addition to the packing algorithm, the thesis presents a complete robotic vision system that enables real-world application. Object detection is performed using the Florence-2 model, while precise object segmentation is achieved with the Segment Anything (SAM) model. From the obtained segmentation masks, geometric properties such as object center and orientation are computed, and point cloud data are processed for further use. The entire pipeline is integrated into a robotic application comprising a robotic manipulator, a depth camera, and a robotic gripper. The performance of the proposed algorithm is evaluated through execution time measurements and a comparison of surface utilization with existing packing approaches. The results demonstrate that the developed method achieves comparable or superior packing density for irregular shapes, while maintaining moderate computational complexity suitable for real-time operation. The thesis thus shows that SDF-based methods provide a flexible and effective foundation for automated, robust, and adaptive object packing systems in industrial applications.

Keywords:automated object packing, signed distance field (SDF), robotic vision, robotic manipulator

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