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In Zeiten großer Veränderungen haben genossenschaftlich organisierte KMU die Möglichkeit, auf komplexe Herausforderungen mit kooperativen Lösungsansätzen zu reagieren, vor allem wenn dabei die Kraft und Kreativität der Gemeinschaft genutzt wird. Getreu dem Motto „Was einer alleine nicht schafft, das schaffen viele“ des Genossenschaftsvorreiters Friedrich Wilhelm Raiffeisen ist gemeinschaftliches unternehmerisches Handeln identitätsstiftend und motivierend, woraus wiederum eine sich selbst verstärkende Eigendynamik entstehen kann. Wie Mittelstand, Politik und Gesellschaft davon profitieren, stellen Prof. Dr. Tobias Popovic und Prof. Dr. Thomas Baumgärtler in diesem Beitrag dar.
Entity Matching (EM) defines the task of learning to group objects by transferring semantic concepts from example groups (=entities) to unseen data. Despite the general availability of image data in the context of many EM-problems, most currently available EM-algorithms solely rely on (textual) meta data. In this paper, we introduce the first publicly available large-scale dataset for "visual entity matching", based on a production level use case in the retail domain. Using scanned advertisement leaflets, collected over several years from different European retailers, we provide a total of ~786k manually annotated, high resolution product images containing ~18k different individual retail products which are grouped into ~3k entities. The annotation of these product entities is based on a price comparison task, where each entity forms an equivalence class of comparable products. Following on a first baseline evaluation, we show that the proposed "visual entity matching" constitutes a novel learning problem which can not sufficiently be solved using standard image based classification and retrieval algorithms. Instead, novel approaches which allow to transfer example based visual equivalent classes to new data are needed to address the proposed problem. The aim of this paper is to provide a benchmark for such algorithms.
Information about the dataset, evaluation code and download instructions are provided under https://www.retail-786k.org/.
Modern CNNs are learning the weights of vast numbers of convolutional operators. In this paper, we raise the fundamental question if this is actually necessary. We show that even in the extreme case of only randomly initializing and never updating spatial filters, certain CNN architectures can be trained to surpass the accuracy of standard training. By reinterpreting the notion of pointwise ($1\times 1$) convolutions as an operator to learn linear combinations (LC) of frozen (random) spatial filters, we are able to analyze these effects and propose a generic LC convolution block that allows tuning of the linear combination rate. Empirically, we show that this approach not only allows us to reach high test accuracies on CIFAR and ImageNet but also has favorable properties regarding model robustness, generalization, sparsity, and the total number of necessary weights. Additionally, we propose a novel weight sharing mechanism, which allows sharing of a single weight tensor between all spatial convolution layers to massively reduce the number of weights.
Rezension zu Rolf Ph. Illenberger (2013): Erfolgsfaktoren printmarkenbasierter Online-Angebote
(2013)