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Invariant Image-Based Currency Denomination Recognition Using Local Entropy and Range Filters

机译:不变的基于图像的货币面额识别使用当地熵和范围过滤器

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摘要

We perform image-based denomination recognition of the Pakistani currency notes. There are a total of seven different denominations in the current series of Pakistani notes. Apart from color and texture, these notes differ from one another mainly due to their aspect ratios. Our aim is to exploit this single feature to attain an image-based recognition that is invariant to the most common image variations found in currency notes images. Among others, the most notable image variations are caused by the difference in positions and in-plane orientations of the currency notes in images. While most of the proposed methods for currency denomination recognition only focus on attaining higher recognition rates, our aim is more complex, i.e., attaining a high recognition rate in the presence of image variations. Since, the aspect ratio of a currency note is invariant to such differences, an image-based recognition of currency notes based on aspect ratio is more likely to be translation- and rotation-invariant. Therefore, we adapt a two step procedure that first extracts a currency note from the homogeneous image background via local entropy and range filters. Then, the aspect ratio of the extracted currency note is calculated to determine its denomination. To validate our proposed method, we gathered a new dataset with the largest and most diverse collection of Pakistani currency notes, where each image contains either a single or multiple notes at arbitrary positions and orientations. We attain an overall average recognition rate of 99% which is very encouraging for our method, which relies on a single feature and is suited for real-time applications. Consequently, the method may be extended to other international and historical currencies, which makes it suitable for business and digital humanities applications.
机译:我们执行基于图像的面额识别巴基斯坦货币票据。目前的巴基斯坦笔记中共有七种不同的面位。除了颜色和纹理外,这些音符彼此不同,主要是由于它们的纵向比率。我们的目标是利用此单一功能来实现基于图像的识别,这些识别不变于货币注释图像中最常见的图像变化。其中,最值得注意的图像变化是由图像中货币笔记的位置和面内取向的差异引起的。虽然大多数拟议的货币面额识别方法仅关注获得更高的识别率,但我们的目标是更复杂的,即,在存在图像变异的情况下获得高识别率。由于,货币票据的宽高比是不导致这种差异的,因此基于宽高比的货币笔记的基于图像的识别更可能是翻译和旋转不变的。因此,我们通过本熵和范围滤波器来调整第一步骤,首先首先从同一熵图像背景中提取货币票据。然后,计算提取的货币笔记的纵横比以确定其面额。为了验证我们提出的方法,我们收集了一个具有最大和最多样化的巴基斯坦货币票据的新数据集,其中每个图像都包含单个或多个音符,在任意位置和方向上。我们达到了99%的总体平均识别率为我们的方法非常令人鼓舞,这依赖于单一特征,适用于实时应用。因此,该方法可以扩展到其他国际和历史货币,这使其适合商业和数字人文应用。

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