Abstract

In recent years, a range of problems under the broad umbrella of computer vision based analysis of ancient coins have been attracting an increasing amount of attention. Notwithstanding this research effort, the results achieved by the state of the art in published literature remain poor and far from sufficiently well performing for any practical purpose. In the present paper we present a series of contributions which we believe will benefit the interested community. We explain that the approach of visual matching of coins, universally adopted in existing published papers on the topic, is not of practical interest because the number of ancient coin types exceeds by far the number of those types which have been imaged, be it in digital form (e.g., online) or otherwise (traditional film, in print, etc.). Rather, we argue that the focus should be on understanding the semantic content of coins. Hence, we describe a novel approach—to first extract semantic concepts from real-world multimodal input and associate them with their corresponding coin images, and then to train a convolutional neural network to learn the appearance of these concepts. On a real-world data set, we demonstrate highly promising results, correctly identifying a range of visual elements on unseen coins with up to 84% accuracy.

Highlights

  • Numismatics is the study of currency, including coins, paper money, and tokens

  • Individual ancient coins of the same type can vary widely in appearance due to centering, wear, patination, and variance in artistic depiction of the same semantic elements. This poses a range of technical challenges and makes it difficult to reliably identify which concepts are depicted on a given coin using machine learning and computer vision based automatic techniques [2]

  • To facilitate the automatic extraction of salient semantic elements and the learning of their visual appearance, each coin image is associated with an unstructured text description of the coin, as provided by the professional dealer selling the coin; see Figure 3

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Summary

Introduction

Numismatics is the study of currency, including coins, paper money, and tokens. This discipline yields fascinating cultural and historical insights and is a field of great interest to scholars, amateur collectors, and professional dealers alike. Individual ancient coins of the same type can vary widely in appearance due to centering, wear, patination, and variance in artistic depiction of the same semantic elements This poses a range of technical challenges and makes it difficult to reliably identify which concepts are depicted on a given coin using machine learning and computer vision based automatic techniques [2]. Deep learning loosely refers to neural networks with many layers, which enables them to identify high level features present in the data This approach has proven successful across a range of tasks, including recommendation systems, language processing, pattern recognition of many kinds and computer vision [16]. These kinds of data are much more abundant and easier to obtain than fully supervised data (pixel level labels) but pose a far greater challenge

Challenge of Weak Supervision
Data Pre-Processing and Clean-Up
Image Based Pre-Processing
Text Based Extraction of Semantics
Randomization and stratification
Errors in Data
Proposed Framework
Experiments
Results and Discussion
Learnt Salient Regions
Summary and Conclusions
Full Text
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