Please use this identifier to cite or link to this item: https://doi.org/10.15480/336.4470
DC FieldValueLanguage
dc.contributor.authorKnitt, Markus-
dc.contributor.authorSchyga, Jakob-
dc.contributor.authorAdamanov, Asan-
dc.contributor.authorHinckeldeyn, Johannes-
dc.contributor.authorKreutzfeldt, Jochen-
dc.date.accessioned2022-08-26T10:26:21Z-
dc.date.available2022-08-26T10:26:21Z-
dc.date.issued2022-08-26-
dc.identifier.urihttp://hdl.handle.net/11420/13164-
dc.description.abstractPalLoc6D contains 50 000 synthetically generated images of a photorealistic pallet in a domain-radomized environment. PalLoc6D includes annotations of the pallets' 6D pose. The data was created using the NVIDIA Dataset Synthesizer (NDDS, https://github.com/NVIDIA/Dataset_Synthesizer). Additionally, a photorealistic 3D model of a Euro pallet is provided. PalLoc6D can be used to train neural networks for RGB camera-based 6D pallet pose estimation, such as Nvidia's "Deep Object Pose Estimation" (DOPE, https://github.com/NVlabs/Deep_Object_Pose). Furthermore, the weights of the DOPE algorithm, trained with the annotated images are included in PalLoc6D to allow a quick start for experimenting with 6D pose estimation. PalLoc6D was published as part of the paper "Estimating the Pose of a Euro Pallet with an RGB Camera based on Synthetic Training Data", which was presented at the WGTL Fachkolloquium 2022 in Bremen and will be subsequently published in the Logistics Journal. The purpose, creation, and validation of the dataset are further elaborated in the publication. Paper abstract: "Estimating the pose of a pallet and other logistics objects is crucial for various use cases, such as automatized material handling or tracking. Innovations in computer vision, computing power, and machine learning open up new opportunities for device-free localization based on cameras and neural networks. Large image datasets with annotated poses are required for training the network. Manual annotation, especially of 6D poses, is an extremely labor-intensive process. Hence, newer approaches often leverage synthetic training data to automatize the process of generating annotated image datasets. In this work, the generation of synthetic training data for 6D pose estimation of pallets is presented. The data is then used to train the Deep Object Pose Estimation (DOPE) algorithm. The experimental validation of the algorithm proves that the 6D pose estimation of a standardized Euro pallet with a Red-Green-Blue (RGB) camera is feasible. The comparison of the results from three varying datasets under different lighting conditions shows the relevance of an appropriate dataset design to achieve an accurate and robust localization. The quantitative evaluation shows an average position error of less than 20 cm for the preferred dataset. The validated training dataset and a photorealistic model of a Euro pallet are publicly provided."en
dc.language.isoende_DE
dc.rights.urihttps://creativecommons.org/publicdomain/zero/1.0/de_DE
dc.subject6D pose estimationde_DE
dc.subjectEuro palletde_DE
dc.subjectsynthetic training datasetde_DE
dc.subjectRGB camerade_DE
dc.subjectDeep Object Pose Estimationde_DE
dc.subjectNVIDIA Dataset Synthesizerde_DE
dc.subject.ddc004: Informatikde_DE
dc.subject.ddc600: Technikde_DE
dc.subject.ddc620: Ingenieurwissenschaftende_DE
dc.titlePalLoc6D - Estimating the Pose of a Euro Pallet with an RGB Camera based on Synthetic Training Datade_DE
dc.typeDatasetde_DE
dc.identifier.doi10.15480/336.4470-
dc.type.diniResearchData-
dcterms.DCMITypeDataset-
tuhh.identifier.urnurn:nbn:de:gbv:830-882.0191325-
tuhh.abstract.englishPalLoc6D contains 50 000 synthetically generated images of a photorealistic pallet in a domain-radomized environment. PalLoc6D includes annotations of the pallets' 6D pose. The data was created using the NVIDIA Dataset Synthesizer (NDDS, https://github.com/NVIDIA/Dataset_Synthesizer). Additionally, a photorealistic 3D model of a Euro pallet is provided. PalLoc6D can be used to train neural networks for RGB camera-based 6D pallet pose estimation, such as Nvidia's "Deep Object Pose Estimation" (DOPE, https://github.com/NVlabs/Deep_Object_Pose). Furthermore, the weights of the DOPE algorithm, trained with the annotated images are included in PalLoc6D to allow a quick start for experimenting with 6D pose estimation. PalLoc6D was published as part of the paper "Estimating the Pose of a Euro Pallet with an RGB Camera based on Synthetic Training Data", which was presented at the WGTL Fachkolloquium 2022 in Bremen and will be subsequently published in the Logistics Journal. The purpose, creation, and validation of the dataset are further elaborated in the publication. Paper abstract: "Estimating the pose of a pallet and other logistics objects is crucial for various use cases, such as automatized material handling or tracking. Innovations in computer vision, computing power, and machine learning open up new opportunities for device-free localization based on cameras and neural networks. Large image datasets with annotated poses are required for training the network. Manual annotation, especially of 6D poses, is an extremely labor-intensive process. Hence, newer approaches often leverage synthetic training data to automatize the process of generating annotated image datasets. In this work, the generation of synthetic training data for 6D pose estimation of pallets is presented. The data is then used to train the Deep Object Pose Estimation (DOPE) algorithm. The experimental validation of the algorithm proves that the 6D pose estimation of a standardized Euro pallet with a Red-Green-Blue (RGB) camera is feasible. The comparison of the results from three varying datasets under different lighting conditions shows the relevance of an appropriate dataset design to achieve an accurate and robust localization. The quantitative evaluation shows an average position error of less than 20 cm for the preferred dataset. The validated training dataset and a photorealistic model of a Euro pallet are publicly provided."de_DE
tuhh.publication.instituteTechnische Logistik W-6de_DE
tuhh.identifier.doi10.15480/336.4470-
tuhh.type.opusDataset-
tuhh.gvk.hasppnfalse-
tuhh.hasurnfalse-
dc.type.driverother-
dc.type.casraiOther-
datacite.relation.Referenceshttps://github.com/NVIDIA/Dataset_Synthesizer-
datacite.relation.Referenceshttps://github.com/NVlabs/Deep_Object_Pose-
tuhh.type.rdmtrue-
local.researchdata.deleteaftertenyearstruede_DE
datacite.resourceTypeResearchData-
datacite.resourceTypeGeneralDataset-
item.openairetypeDataset-
item.openairecristypehttp://purl.org/coar/resource_type/c_ddb1-
item.fulltextWith Fulltext-
item.languageiso639-1en-
item.grantfulltextopen-
item.mappedtypeDataset-
item.cerifentitytypeProducts-
item.creatorGNDKnitt, Markus-
item.creatorGNDSchyga, Jakob-
item.creatorGNDAdamanov, Asan-
item.creatorGNDHinckeldeyn, Johannes-
item.creatorGNDKreutzfeldt, Jochen-
item.creatorOrcidKnitt, Markus-
item.creatorOrcidSchyga, Jakob-
item.creatorOrcidAdamanov, Asan-
item.creatorOrcidHinckeldeyn, Johannes-
item.creatorOrcidKreutzfeldt, Jochen-
crisitem.author.deptTechnische Logistik W-6-
crisitem.author.deptTechnische Logistik W-6-
crisitem.author.deptTechnische Logistik W-6-
crisitem.author.deptTechnische Logistik W-6-
crisitem.author.orcid0000-0002-4051-2268-
crisitem.author.orcid0000-0002-1687-7654-
crisitem.author.orcid0000-0001-8151-3067-
crisitem.author.orcid0000-0001-9823-7679-
crisitem.author.orcid0000-0003-3648-576X-
crisitem.author.parentorgStudiendekanat Management-Wissenschaften und Technologie-
crisitem.author.parentorgStudiendekanat Management-Wissenschaften und Technologie-
crisitem.author.parentorgStudiendekanat Management-Wissenschaften und Technologie-
crisitem.author.parentorgStudiendekanat Management-Wissenschaften und Technologie-
Appears in Collections:Research Data TUHH
Files in This Item:
File Description SizeFormat
Euro Pallet 3D Model.zipPhotorealistic model of a Euro pallet3,67 GBZIPView/Open
ndds3_pallet.pth196,42 MBPyTorch View/Open
PalLoc6D_part1.zipTraining Data Part 14,98 GBZIPView/Open
PalLoc6D_part2.zipTraining Data Part 24,93 GBZIPView/Open
PalLoc6D_part3.zipTraining Data Part 34,97 GBZIPView/Open
PalLoc6D_part4.zipTraining Data Part 44,95 GBZIPView/Open
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