Visual Landmark Recognition from Internet Photo Collections: A Large-Scale Evaluation
Tobias Weyand, Bastian Leibe

TL;DR
This paper evaluates the performance of large-scale Internet photo collection-based landmark recognition systems, analyzing each pipeline component to identify limitations and potential improvements across various landmark types.
Contribution
It provides a comprehensive empirical analysis of landmark recognition from Internet photos, highlighting the effects of different methods and parameters on system performance.
Findings
Recognition performance varies significantly across landmark types.
Certain clustering and indexing methods improve recognition accuracy.
Semantic information extraction faces challenges depending on landmark categories.
Abstract
The task of a visual landmark recognition system is to identify photographed buildings or objects in query photos and to provide the user with relevant information on them. With their increasing coverage of the world's landmark buildings and objects, Internet photo collections are now being used as a source for building such systems in a fully automatic fashion. This process typically consists of three steps: clustering large amounts of images by the objects they depict; determining object names from user-provided tags; and building a robust, compact, and efficient recognition index. To this date, however, there is little empirical information on how well current approaches for those steps perform in a large-scale open-set mining and recognition task. Furthermore, there is little empirical information on how recognition performance varies for different types of landmark objects and…
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