Stauffer, Michael

Lade...
Profilbild
E-Mail-Adresse
Geburtsdatum
Projekt
Organisationseinheiten
Berufsbeschreibung
Nachname
Stauffer
Vorname
Michael
Name
Stauffer, Michael

Suchergebnisse

Gerade angezeigt 1 - 10 von 10
Vorschaubild nicht verfügbar
Publikation

Filters for graph-based keyword spotting in historical handwritten documents

2020, Stauffer, Michael, Fischer, Andreas, Riesen, Kaspar

Vorschaubild nicht verfügbar
Publikation

Keyword spotting in historical handwritten documents based on graph matching

2018, Stauffer, Michael, Fischer, Andreas, Riesen, Kaspar

In the last decades historical handwritten documents have become increasingly available in digital form. Yet, the accessibility to these documents with respect to browsing and searching remained limited as full automatic transcription is often not possible or not sufficiently accurate. This paper proposes a novel reliable approach for template-based keyword spotting in historical handwritten documents. In particular, our framework makes use of different graph representations for segmented word images and a sophisticated matching procedure. Moreover, we extend our method to a spotting ensemble. In an exhaustive experimental evaluation on four widely used benchmark datasets we show that the proposed approach is able to keep up or even outperform several state-of-the-art methods for template- and learning-based keyword spotting.

Vorschaubild nicht verfügbar
Publikation

Analysis of Chaotic Maps Applied to Kohonen Self-organizing Maps for the Traveling Salesman Problem

2015-05, Stauffer, Michael, Ryter, Remo, Hanne, Thomas, Dornberger, Rolf

Vorschaubild nicht verfügbar
Projekt

SI Simulated Reality

Vorschaubild nicht verfügbar
Publikation

Graph-based keyword spotting in historical manuscripts using Hausdorff edit distance

2019, Ameri, Mohammad Reza, Stauffer, Michael, Riesen, Kaspar, Bui, Tien Dai, Fischer, Andreas, Fischer, Andreas

Keyword spotting enables content-based retrieval of scanned historical manuscripts using search terms, which, in turn, facilitates the indexation in digital libraries. Recent approaches include graph-based representations that capture the complex structure of handwriting. However, the high representational power of graphs comes at the cost of high computational complexity for graph matching. In this article, we investigate the potential of Hausdorff edit distance (HED) for keyword spotting. It is an efficient quadratic-time approximation of the graph edit distance. In a comprehensive experimental evaluation with four types of handwriting graphs and four benchmark datasets (George Washington, Parzival, Botany, and Alvermann Konzilsprotokolle), we demonstrate a strong performance of the proposed HED-based method when compared with the state of the art, both, in terms of precision and speed.

Vorschaubild nicht verfügbar
Publikation

Uniform and Non-Uniform Pseudorandom Number Generators in a Genetic Algorithm Applied to an Order Picking Problem

2016-07-24, Stauffer, Michael, Hanne, Thomas, Dornberger, Rolf

Vorschaubild nicht verfügbar
Publikation

Genetic algorithm with embedded Ikeda map applied on an order picking problem in a multi-aisle warehouse

2014-12-09T00:00:00Z, Stauffer, Michael, Ryter, Remo, Davendra, Donald, Dornberger, Rolf, Hanne, Thomas

Vorschaubild nicht verfügbar
Publikation

Graph-based keyword spotting in historical documents using context-aware Hausdorff edit distance

2018, Stauffer, Michael, Fischer, Andreas, Riesen, Kaspar

Scanned handwritten historical documents are often not well accessible due to the limited feasibility of automatic full transcriptions. Thus, Keyword Spotting (KWS) has been proposed as an alternative to retrieve arbitrary query words from this kind of documents. In the present paper, word images are represented by means of graphs. That is, a graph is used to represent the inherent topological characteristics of handwriting. The actual keyword spotting is then based on matching a query graph with all document graphs. In particular, we make use of a fast graph matching algorithm that considers the contextual substructure of nodes. The motivation for this inclusion of node context is to increase the overall KWS accuracy. In an experimental evaluation on four historical documents, we show that the proposed procedure clearly outperforms diverse other template-based reference systems. Moreover, our novel framework keeps up or even outperforms many state-of-the-art learning-based KWS approaches.

Vorschaubild nicht verfügbar
Publikation

A review and extension of the Visual Information Seeking Mantra (VISM)

2016-03-08, Stauffer, Michael, Ryter, Remo, Hil, Darjan, Dornberger, Rolf

Vorschaubild nicht verfügbar
Publikation

Optimization of the Picking Sequence of an Automated Storage and Retrieval System (AS/RS)

2014-07-11T00:00:00Z, Dornberger, Rolf, Hanne, Thomas, Ryter, Remo, Stauffer, Michael