A Survey on Banknote Recognition Methods by Various Sensors
Abstract
:1. Introduction
1.1. Motivation of the Research
1.2. Scope and Method of Our Research
1.2.1. Scope of Our Research
1.2.2. Method of Our Research
2. Banknote Recognition
2.1. Banknote Recognition Methodology
2.2. Preprocessing of Banknote Image
2.3. Feature Extraction
2.4. Classification and Verification
2.5. Analyses and Discussion of Banknote Recognition
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- The banknote recognition function of a banknote counter should ensure not only a stable recognition rate, but also real-time processing speed because it continuously handles real money.
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- The per-note processing time should be constant because time discrepancy in processing individual notes leads to non-normal storage of continuous high-speed banknote data input, triggering a system crash.
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- With the increasing demand for simultaneous multi-currency recognition, stable recognition and a rapid processing speed for an increased number of classes are required, unlike the initially used manual selection-based single-currency recognition methods.
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- While there is a considerable body of research presenting numerous banknote recognition methods using feature extraction and classifiers, no study has yet been conducted on the convolutional neural network (CNN)-based banknote recognition, which has recently been attracting attention. This may be ascribed to the difficulty associated with loading a high-performance graphics card capable of the parallel processing essential for high-speed CNN processing onto a banknote counter. Therefore, this method may be applied to server-based high-capacity counting systems in the future.
3. Counterfeit Banknote Detection
3.1. Counterfeit Banknote Detection Method
3.1.1. Analyses of Anti-Counterfeiting Features inside a Banknote
3.1.2. Counterfeit Banknote Detection
3.2. Coordinate Mapping between Recognized Banknote Image and Sensor Data for Counterfeit Detection
3.3. Feature Extraction
3.4. Classification of Counterfeit Banknote
3.5. Analyses and Discussion of Counterfeit Banknote Detection
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- Given the highly sophisticated techniques used for producing counterfeit banknotes, distinguishing them from genuine banknotes poses a great challenge. For counterfeit banknote classification, it is absolutely necessary to perform precise analyses of the characteristics of all anti-counterfeiting features (security features deliberately included in banknotes to deter counterfeiting) contained in the genuine banknotes of the denominations concerned.
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- Counterfeit banknote detection is a perpetual process; if a highly efficient counterfeit detection algorithm is developed, more refined counterfeit banknotes disabling that algorithm appear, which necessitates the development of another algorithm to detect them in a never-ending spear-and-shield fight. For this reason, it is practically impossible to design a 100% perfect long-lasting counterfeit detection algorithm with a genuine banknote false rejection rate of 0%. As an alternative approach, developing a highly efficient counterfeit detection algorithm that would increase the counterfeit banknote production costs to such an extent that it is not worth making counterfeit banknotes may put an end to this endless combat.
4. Serial Number Recognition
4.1. Overall Procedure of Serial Number Recognition
4.2. Image Preprocessing
4.3. Feature Extraction
4.4. Classification
4.5. Analyses and Discussion of Serial Number Recognition
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- While serial number recognition is methodologically similar to other in-document number recognition problems, it differs from them in that banknote surfaces get soiled over time due to dirt and sebum from users’ hands, making it increasingly difficult to distinguish the serial number from the background surface as a banknote ages. Moreover, banknotes are frequently exposed to risks of damage, such as creases and tears. This makes it necessary to design a strong system capable of serial number recognition on the images of various conditions of banknotes, including those heavily soiled with hand sebum and dirt or tattered with creases and tears.
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- In general, a banknote serial number contains the year of printing and information on the issuing bank. Such information can be effectively used for tracing stolen money and detecting counterfeit banknotes once a denomination-wise banknote management system is established.
5. Fitness Classification
5.1. Overall Procedure of Fitness Classification
5.2. Feature Extraction
5.3. Fitness Classification
5.4. Analyses and Discussion of Fitness Classification
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- Most methods for fitness classification classify banknotes into two classes: fit and unfit banknotes. However, such a binary classification has the inherent problem of requiring subjective judgment without any clear-cut quantifiable criteria. Therefore, experts are usually involved to perform visual assessment of the soiling level of banknotes, or densitometers are used to distinguish fit and unfit banknotes depending on the measured values.
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- Besides the binary classification of fit and unfit banknotes, it is also important to ensure reproducibility of the assigned fitness level when the same banknote is put into a machine repeatedly.
6. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Recognition Mode | National Currency | References | Databases | Availability of Database | ||
---|---|---|---|---|---|---|
Ref. | #Images | #Denomination Kind | ||||
Single Currency Recognition | United States (USD) | [8,9,15,16,17,18,19,20,21,22,23,24,25] | [8] | 61,240 | 16 | N/A |
[9] | 99,236 | 17 | N/A | |||
[15,22] | 3570 | 6 | N/A | |||
[16] | 15,000 | 6 | N/A | |||
[19] | 65,700 | 12 | N/A | |||
China (CNY) | [11,12,13,16,26,27,28,29,30,31] | [11] | 297,200 | 3 | N/A | |
[13] | 16,000 | 5 | N/A | |||
[26] | 3360 | 4 | N/A | |||
[28] | 20,000 | 5 | N/A | |||
[30] | 1600 | 4 | N/A | |||
Euro (EUR) | [16,32,33,34,35] | [16] | 15,000 | 7 | N/A | |
[32] | 140 | 7 | N/A | |||
[35] | 82 | N/I | N/A | |||
India (INR) | [36,37,38,39,40,41,42,43] | [36] | 350 | 7 | N/A | |
[38] | 39 | 3 | N/A | |||
[41] | 504 | 6 | N/A | |||
South Korea (KRW) | [44] | 10,800 | 3 | N/A | ||
Iran (IRR) | [45,46,47,48] | [45] | 4000 | 8 | N/A | |
[47] | 128 | 8 | N/A | |||
[48] | 240 | 6 | N/A | |||
Mexico (MXN) | [49,50] | 1600 | 5 | N/A | ||
Australia (AUD) | [51,52] | [51] | 1320 | 6 | N/A | |
South African (ZAR) | [9] | 760 | 10 | N/A | ||
New Zealand (NZD) | [53] | 367 | 5 | N/A | ||
Sri Lanka (LKR) | [54] | 280 | 4 | N/A | ||
Pakistan (PKR) | [55] | 120 | 6 | N/A | ||
Angola (AOA) | [9] | 1366 | 9 | N/A | ||
Italy (ITL) | [56,57,58] | [57] | 80 | 8 | N/A | |
[58] | 30 | 8 | N/A | |||
Saudi Arabia (SAR) | [37,59,60] | [37] | 4 | 2 | N/A | |
[59] | 300 | 3 | N/A | |||
[60] | 110 | 1 | N/A | |||
Jordan (JOD) | [14] | 500 | 10 | A | ||
Ethiopia (ETB) | [61] | 240 | 5 | N/A | ||
Bangladesh (BDT) | [62,63] | [62] | 1700 | 8 | N/A | |
[63] | N/I | 7 | N/A | |||
Myanmar (MMK) | [64] | 89 | 5 | N/A | ||
Malawi (MWK) | [9] | 2464 | 6 | N/A | ||
Multi-Currency Simultaneous Recognition | USD, EUR, KRW, CNY, Russia (RUB) | [10] | 100,797 from 5 national currencies | 55 from 5 national currencies | N/A | |
23 countries (CNY, EUR, INR, USD, etc.) | [65] | 150 from 23 national currencies | 101 from 23 national currencies | N/A | ||
Turkey (TRY), Cyprus (CYP) | [66] | 180 (TRY), 144 (CYP) | 5 (TRY), 4 (CYP) | N/A | ||
USD, EUR | [67] | N/I | 4 (USD), 7 (EUR) | N/A | ||
USD, Japan (JPY) | [68] | 132 (USD), 50 (JPY) | 6 (USD), 3 (JPY) | N/A | ||
JPY, ITL, Spain (ESP), France (FRF) | [69] | 165 (JPY), 440 (ITL), 385 (ESP), 275 (FRF) | 3 (JPY), 8 (ITL), 7 (ESP), 5 (FRF) | N/A | ||
USD, EUR, BDT, INR | [70] | 300 (USD), 300 (EUR), 500 (BDT), 300 (INR) | 3 (USD), 3 (EUR), 5 (BDT), 3 (INR) | N/A |
Task | Method | References |
---|---|---|
Banknote region segmentation | Corner detection | [8,9] |
Least square method and fuzzy system | [12] | |
Component labeling based on the Y component of YIQ space | [68] | |
Noise removal and gray level reduction | Weiner filtering | [10,49,55,65,71] |
Median filtering | [42,64] | |
Gray level reduction | [54,65,71,72] | |
Brightness normalization and contrast enhancement | Histogram equalization | [42,45] |
Image resolution reduction | Nearest neighbor interpolation | [10,67] |
Image channel reduction | Conversion of color to gray | [23,39,46,55,63,72] |
Method | References |
---|---|
Features of banknote size or length | [45,56,60,65,68,72] |
Color information (RGB, HSV, or HSI) | [37,40,45,49,50,61,68] |
Edge information (Canny, Prewitt, or Sobel operator) | [40,44,54,60] |
Histogram information (correlation, central moments, kurtosis, mean, standard deviation, skewness, etc.) | [39,43,53,59,64,65] |
Local binary patterns (LBP) | [41,49] |
Gray-level co-occurrence matrix (GLCM) | [39,53,64] |
Principle component analysis (PCA) | [8,9,15,20,21,22,23,26,46] |
Linear discriminant analysis (LDA) | [43,46,70] |
Genetic algorithm (GA) | [24,30,69,73] |
Similarity map or difference map | [9,10,19] |
Discrete wavelet transform (DWT) | [11,16,44,47,48] |
Scale-invariant feature transform (SIFT) or speeded up robust features (SURF) | [14,17,18,25,35,36,61,67,74] |
Compressed sensing | [27] |
Features by optical character recognition (OCR) | [38] |
Features from selected ROI | [8,9,13,17,20,23,30,32,36,38,39,43,48,59,68] |
Methods | References | |
---|---|---|
Classification | Euclidean distance-based classifier | [36,37,41,42,48,51] |
Mahalanobis distance-based classifier | [23] | |
NN (LVQ network, ENN and PNN, etc.) | [15,16,20,21,22,24,26,29,30,31,32,33,34,38,45,46,47,49,53,54,56,57,58,62,63,66,69,72,73] | |
SVM | [8,11,39,43,67,71] | |
HMM | [13,65,71] | |
K-means algorithm | [8,9] | |
K-NN method | [55,64] | |
Preclassification (based on banknote side, direction, size, or a Gaussian mixture model (GMM)) | [8,10,32,75] | |
Verification | Verification (based on the validity of matching distance or banknote size) | [9,54] |
References | Features and Advantages |
---|---|
[8] | Banknote counter DSP processing (processing time: 15.6 ms), preclassification of the banknote input side (SVM), number of experimental data points (61,240 notes), accuracy (USD: 99.886%) |
[73] | Banknote counter DSP processing (banknote counting machine by Glory Corp.), GA-based selection of optimal mask and use of a NN, number of experimental data points (100,000 notes), accuracy (USD and JPY: ≥97%) |
[9] | Banknote counter DSP processing, feature region selection using a similarity map, number of experimental data points (99,236 USD notes), accuracy (USD: 99.998%) |
[10] | Simultaneous recognition of 5 national currencies (USD, EUR, KRW, CNY, RUB), ROI selection after using a similarity map, number of experimental data points (84,800 of 5 kinds of banknote), accuracy (100%) |
[16] | Quaternion WT-based data extraction of the magnitude, horizontal, vertical, and diagonal data of banknote images and coefficient feature extraction using the generalized Gaussian density function, number of experimental data points (15,000 USD, CNY, EUR notes each), accuracy (≥99% on average) |
[65] | Simultaneous recognition of 23 national currencies including USD, EUR, INR, and CNY, banknote texture feature modeling using size data and a HMM, number of experimental data points (150 per denomination), recognition rate (98%) |
[67] | ATM DSP processing (processing time: 54 ms), simultaneous recognition of USD and EUR using the dense SIFT feature extraction method, accuracy (≥99.8%) |
[19] | Real-time embedded system processing (processing time: 16 m), valid feature region selection using the difference map, generalized learning vector quantization (GLVQ) classification, number of experimental data points (65700 USD notes), accuracy (99%) |
[69] | GA-based selection of optimal mask, NN-based DSP simultaneous recognition of four national currencies (JPY, ITL, ESP, FRF) using a banknote counter, number of experimental data points (20,000 notes), accuracy (97%) |
[74] | Multi-currency simultaneous recognition (INR, CNY, EUR, etc.) using a mobile camera and server communication system with a feature enabling overlapping multi-currency simultaneous recognition, recognition rate (95%) |
Feature | Method | References |
---|---|---|
Brightness information | Y histogram of YIQ color space or luminance histogram | [83,84] |
Fluorescence characteristics | UV pattern | [85,86,87] |
X-Ray fluorescence | [88,89,90,91] | |
Intrinsic fluorescence lifetime | [92] | |
Fidelity of serial number and printing | Binarization, edge detection, and radial based function (RBF) NNs | [93] |
Printing accuracy by tie point detection | [94] | |
Security thread | Electromagnetic detection based on the pulsed eddy current technique | [95] |
Infrared (IR) features | The middle IR spectrum of several areas in the banknotes | [96] |
Near IR features | [75,82,97,98,99,100] | |
Commercial system using multiple sensors including IR ray sensor | [101] |
National Currency | References | Databases | Availability of Database | ||
---|---|---|---|---|---|
Ref. | #Images | #Denomination Kind | |||
India (INR) | [84,87,99,102,103,104,105,106,107,108,109,110,111,112,113,114,115] | [87] | 1000 | 2 | N/A |
[113] | 288 | 3 | N/A | ||
Euro (EUR) | [88,94,96,98] | [96] | 18 | 2 | N/A |
[98] | 2750 | 7 | N/A | ||
United States (USD) | [88,91,92] | [91] | 120 | 2 | N/A |
[92] | 10 | 5 | N/A | ||
Kuwait (KWD) | [116] | 4 | 2 | N/A | |
Nepal (NPR) | [117] | 240 | 1 | N/A | |
Switzerland (CHF) | [118] | 82 | 2 | N/A | |
Taiwan (TWD) | [83,119] | [83] | 99 | N/I | N/A |
[119] | 200 | N/I | N/A | ||
South Korea (KRW) | [85,86] | [85] | 360 | 3 | N/A |
[86] | N/I | 9 | N/A | ||
United Kingdom (GBP) | [95] | 3 | 2 | N/A | |
China (CNY) | [86] | N/I | 1 | N/A | |
Malaysia (MYR) | [86] | N/I | 1 | N/A |
Method | References |
---|---|
Features from intaglio printing, ink properties, artwork, fluorescence, or year of printing | [87,106] |
Bit-plane slicing and Canny edge detection | [116] |
Watermark segmentation | [105,106,108,110,113,114] |
Luminance histograms and texture features from GLCM | [84] |
DWT | [102] |
Security thread information | [87,103,104,105,110,113,114] |
Optically variable ink information | [106,110,113] |
SIFT algorithm | [112] |
Mean, standard deviation, skewness, entropy, and correlation in an ROI | [117] |
Identification mark or number panels | [103,104,105,106] |
Micro lettering or latent image | [104,106] |
Method | References |
---|---|
Template matching or keypoint matching | [106,117] |
Artificial NN | [121] |
SVM | [84,87,119] |
Multiple kernel SVM | [111] |
National Currency | References | Databases | Availability of Database | ||
---|---|---|---|---|---|
Ref. | #Images | #Denomination Kind | |||
China (CNY) | [93,122,123,124,125,126,127,128] | [122] | 40,000 | 2 | N/A |
[125] | 5000 | N/I | N/A | ||
[126,127] | 24,262 | 2 | A | ||
India (INR) | [129,130,131,132] | [129,130] | 25 | 5 | N/A |
Methods | References |
---|---|
Mean filtering for noise reduction | [122,123] |
Adjustment of brightness, contrast, and gamma | [129] |
Size normalization by bilinear interpolation | [124] |
Binarization based on the area-ratio and block contrast | [125] |
Gray-scale normalization | [126] |
Method | References |
---|---|
Features from nine local regions and four key-point features | [122] |
Gradient direction feature | [126] |
Method | References |
---|---|
Euclidean distance-based matching | [122] |
SVM | [123] |
NN | [124,128] |
Cascaded combination of multiple classifiers | [126] |
National Currency | References | Databases | Availability of Database | ||
---|---|---|---|---|---|
Ref. | #Images | #Denomination Kind | |||
Euro (EUR) | [100,133,134,135,136] | [100] | 800 | 4 | N/A |
[133,136] | 9029 | 4 | N/A | ||
India (INR) | [137,138] | [137] | 19,300 | 5 | N/A |
[138] | 2300 | 6 | A | ||
China (CNY) | [139,140] | [140] | 4400 | 1 | N/A |
United States (USD) | [138] | 3856 | 7 | A | |
South Korea (KRW) | [138] | 3956 | 4 | A |
Method | References |
---|---|
Gray pixel value | [133] |
Color pixel value | [133,135,136] |
Pixel values of visible light and NIR images | [100,134,138] |
Gray level histogram | [139] |
Mean and standard deviation from ROI by DWT | [137] |
Acoustic features of banknotes | [141,142] |
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Lee, J.W.; Hong, H.G.; Kim, K.W.; Park, K.R. A Survey on Banknote Recognition Methods by Various Sensors. Sensors 2017, 17, 313. https://doi.org/10.3390/s17020313
Lee JW, Hong HG, Kim KW, Park KR. A Survey on Banknote Recognition Methods by Various Sensors. Sensors. 2017; 17(2):313. https://doi.org/10.3390/s17020313
Chicago/Turabian StyleLee, Ji Woo, Hyung Gil Hong, Ki Wan Kim, and Kang Ryoung Park. 2017. "A Survey on Banknote Recognition Methods by Various Sensors" Sensors 17, no. 2: 313. https://doi.org/10.3390/s17020313
APA StyleLee, J. W., Hong, H. G., Kim, K. W., & Park, K. R. (2017). A Survey on Banknote Recognition Methods by Various Sensors. Sensors, 17(2), 313. https://doi.org/10.3390/s17020313