This invention relates to an acceptor for money items such as coins and banknotes and has particular but not exclusive application to a multi-denomination acceptor.
Coin and banknote acceptors are well known. One example of a coin acceptor is described in our GB-A-2 169 429. The acceptor includes a coin rundown path along which coins pass through a coin sensing station at which sensor coils perform a series of inductive tests on the coins in order to develop coin parameter signals which are indicative of the material and metallic content of the coin under test. The coin parameter signals are digitised and compared with stored coin data by means of a microcontroller to determine the acceptability or otherwise of the test coin. If the coin is found to be acceptable, the microcontroller operates an accept gate so that the coin is directed to an accept path. Otherwise, the accept gate remains inoperative and the coin is directed to a reject path.
In banknote validators, sensors detect characteristics of the banknote. For example, optical detectors can be used to detect the geometrical size of the banknote, its spectral response to a light source in transmission or reflection, or the presence of magnetic printing ink can be detected with an appropriate sensor. The parameter signals thus developed are digitised and compared with stored values in a similar way to the previously described prior art coin acceptor. The acceptability of the banknote is determined on the basis of the results of the comparison.
When a number of coins or banknotes of the same denomination are passed through an acceptor, successive values of coin or banknote parameter data are thus developed. When the distribution of the values of these signals is plotted as a graph, the result is a bell curve, with a central peak and tails on opposite sides. The shape of the graph may typically although not necessarily be Gaussian.
The distribution illustrates that for a money item, such as a coin or banknote of a particular denomination, the most probable value of the corresponding parameter signal lies at the peak of the bell curve, with a decreasing probability to either side. In prior coin and banknote acceptors data is stored in a memory, corresponding to acceptable ranges of parameter signal for a particular denomination. The acceptor compares the value for a coin or banknote under test with the stored data to determine authenticity. The data may define windows in terms of upper and lower limit values; or as a mean value and a standard deviation, such that the window comprises a predetermined number of standard deviations about the mean. By making the stored windows narrow, an increased discrimination is provided between true money items and frauds. However, if the windows are made too narrow, the rejection rate of true money items increases, disadvantageously. The width of the windows is thus selected as a compromise between these two factors. Attempts to defraud coin or banknote acceptors typically involve the manufacture of facsimile coins or banknotes, which cause the acceptor to produce parameter signals which lie within the stored acceptance windows. Hitherto, coin acceptors have been provided with relatively wide and narrow window widths so that the operator can manually select the wide window width for normal operation and the narrow window width if frauds are being presented for validation. An example is described in Japanese unexamined patent application no Hei 2-197985.
A number of different approaches have been proposed to vary the window width dynamically to improve discrimination between true and false coins. In U.S. Pat. No. 5,355,989, a coin acceptor is described which switches automatically from a first normal acceptance window for a true coin, to a second narrower window when a coin parameter signal produced by testing a coin falls in a region of the normal window for the true coin corresponding to a low acceptance probability region for the coin concerned. A group of fraudulent coins may all have similar characteristics and they may cause the acceptor to produce parameter signals which lie within the normal window, but the parameter signals consistently have a value which is not centred on the high probability peak region of the window associated with the true coin and instead are centred on the lower probability tail regions of the bell curve distribution within the normal window. When the parameter signal falls within this low probability region, the second narrower window is then used for the next tested coin. If the next coin has a parameter falling in the narrower window it is a true coin, but if not, it is a fraud that should be rejected. This approach seeks to prevent frauds carried out by the use of coins of a particular low value denomination, from a foreign currency set, with characteristics that correspond but are not exactly the same as a high value coin of the currency set that the acceptor is designed to accept. It will be understood that the foreign denomination coins exhibit their own generally Gaussian distribution of parameter signals, and if the low probability or tail region of this distribution partially overlaps a corresponding region of the distribution for the true coin that the acceptor is designed to accept, then the low value foreign coins will sometimes be accepted as true coins.
Another approach is described in EP-A-0480736, in which the acceptance window is based on the value of a coin parameter for previous acceptable coins, as long as the previous coin parameter values do not deviate significantly from one another. This enables the coin acceptor to self-tune the window to take account of changes in operating parameters such as temperature and other long term drifts. A danger with this approach is that the coin acceptor can be taught to modify its window so as to accept frauds by using fraudulent coins similar to true coins. To overcome this problem, a so-called near miss area is defined and if a coin parameter signal from a coin under test falls in this area, this indicates the risk of a fraud and the window is shifted away from the area to prevent the window position being influenced by the potential fraud. However, the position of the near miss area is critical in order to avoid falsely detecting true items as a fraud attack. To this end the near miss area must be a reasonable distance outside of the true coin population (particularly if the error in positioning the centre of the window is taken into account). This creates a gap were a sufficiently close fraud attempt can still trigger a window shift before it is spotted in the near miss area. It may also be possible to utilise slightly modified true coins or even a different fraud on the other side of the window to train the window towards the original fraud attempt. The method described in EP-A-0480736 is therefore only of use for relatively poor quality frauds and a more stringent system is needed to counter a stronger fraud attack.
The present invention provides an alternative approach, which does not involve the complication of having to control the window width.
According to the invention there is provided a method of accepting of money items, comprising: generating individual money items signals with a value that is a function of respective items of money under test, developing for each of the money items under test, a transformed money item signal as a function of the value of the money item signal and at least one variable parameter that is a function of the acceptability criterion for the money item under test, making a comparison of the values of the transformed money item signals with a window limit value, and accepting each money item in dependence upon said comparison.
The variable parameter may be a function of history data relating to the values of the money item signals for previously tested money items.
The transformed money item signal may developed by transforming the money item signal according to the outcome of a rules based expert system that determines the occurrence of the acceptability criterion. More particularly, the transformed money item signal may be developed by scaling the money item signal for a money item under test in accordance with an amplification factor determined in dependence on the outcome of a comparison of data based on previously tested money items with one or more rules. Different amplification factors may be used, depending on the outcome of the comparisons for the rules.
An average of data corresponding to the money item signals for previously tested money items may be compared with a first limit value lying within a window delimited by said window limit, and if the average is not within said first limit, the money item signal for a money item under test may be scaled in accordance with the amplification factor.
Also, a maximum value of data corresponding to the values of money item signals for previously tested money items may be compared with a second limit value lying within a window delimited by said window limit, and if said maximum value is not within said second limit, the money item signal for a money item under test may be scaled in accordance with the amplification factor.
The window limit may delimit an acceptance window as deviation relative to a window mean, and the value of a money item signal for a money item may be adjusted relative to the window mean, mode or median, whereby to produce an error signal and the transformed money item signal may be developed from the error signal.
The invention also includes an acceptor for money items, comprising: sensor circuitry to provide individual money items signals of a value as a function of respective items of money under test, and a processor configuration to develop for each of the money items under test, a transformed money item signal as a function of the value of the money item signal and at least one variable parameter that is a function of a acceptability criterion for the money item under test, to make a comparison of the values of the transformed money item signals with a window limit value, and to accept each money item in dependence upon said comparison.
In order that the invention may be more fully understood an embodiment thereof will now be described by way of example with reference to the accompanying drawings in which:
Overview of Coin Acceptor
The coin sensing station 4 includes four coin sensing coil units S1, S2, S3 and S4, which are energised in order to produce an inductive coupling with the coin. Also, a coil unit PS is provided in the accept path 6, downstream of the gate 5, to act as a credit sensor in order to detect whether a coin that was determined to be acceptable, has in fact passed into the accept path 6.
The coils are energised at different frequencies by a drive and interface circuit 10 shown schematically in
In order to determine coin authenticity, the coin parameter signals produced by a coin under test are fed to a microcontroller 11, which is coupled to a memory 12. The microcontroller 11 processes the coin parameter signals R1 . . . R4 derived from the coin under test and compares the outcome with corresponding stored values held in the memory 12. The stored values are held in terms of windows having upper and lower value limits. Thus, if the processed data falls within the corresponding windows associated with a true coin of a particular denomination, the coin is indicated to be acceptable, but otherwise is rejected. If acceptable, a signal is provided on line 13 to a drive circuit 14 which operates the gate 5 shown in
The microcontroller 11 compares the processed data with a number of different sets of operating window data from the memory 12, appropriate for coins of different denominations so that the coin acceptor can accept or reject more than one coin of a particular currency set. If the coin is accepted, its passage along the accept path 6 is detected by the post acceptance credit sensor coil unit PS, and the unit 10 passes corresponding data to the microcontroller 11, which in turn provides an output on line 15 that indicates the amount of monetary credit attributed to the accepted coin.
The sensor coil units S each include one or more inductor coils connected in an individual oscillatory circuit and the coil drive and interface circuit 10 includes a multiplexer to scan outputs from the coil units sequentially, so as to provide data to the microcontroller 11. Each circuit typically oscillates at a frequency in a range of 50-150 kHz and the circuit components are selected so that each sensor coil S1-S4 has a different natural resonant frequency in order to avoid cross coupling between them.
As the coin passes the sensor coil unit S1, its impedance is altered by the presence of the coin over a period of ˜100 milliseconds. As a result, the amplitude of the oscillations through the coil is modified over the period that the coin passes and also the oscillation frequency is altered. The variation in amplitude and frequency resulting from the modulation produced by the coin is used to produce the coin parameter signals R1 . . . R4 representative of characteristics of the coin.
Coin Acceptance Process
Artificial intelligence (AI) is utilised to transform at step S3.4 the value of the coin parameter signal Rs prior to the comparison with the fixed window limit at step S3.3. The AI functionality transforms the coin parameter signal to take account of a number of factors, more particularly, the history of previous coins accepted or rejected, rumours such as indications from adjacent coin acceptors that fraudulent coins are being used in the vicinity and environmental inputs such as changes in temperature. For example, the coin parameter signals may be transformed as described in our EP-A-0399694 to take account of temperature changes or the presence of metal objects in the vicinity of the sensor coils, prior to comparison with the fixed window limit.
In this example, the AI functionality comprises a rules based expert system as will now be explained in more detail.
Hitherto it has been proposed to change the window when previous coin readings indicate that there is a risk that a fraudulent coin is being presented to the coin acceptor. The following example of the present invention provides an alternative, improved approach using AI in the form of a rules based expert system. The positive going region of the window from the mean value M to the fixed window limit W2 will be considered, namely region A in
Referring to
Dnew=Rs−M
In this example,
Dnew=3
Corresponding adjusted historic data D1 . . . DN are also derived corresponding to the historic coin parameter signals H1s . . . HNs.
In this example, D1=4 and DN=9.
The microcontroller 11 is configured to store a predetermined number of previous values of the data DN for previously tested coins of the same denomination and to keep a running average of therm. For example, the last 10 values of DN may be stored and a running average AVGDN is computed. Also, the maximum value Max Dn is determined from the stored data Dn on a running basis. The values of Max Dn and AVGDN are used as history data in the coin acceptance process.
Referring again to
Then, at step S6.2 the value of AVGDN is compared with an acceptability criterion defined by a limit value L1 shown in
At step S6.4, the previously computed value of Max Dn is compared with an acceptability criterion defined by a guard limit L2, the value of which is shown in
Then, at step S6.6, the condition of the flag UA is tested to determine if the acceptor is under attack by a fraudster. If there is no fraud attack, the value of the transformed data parameter Tnew is set to be the same value as Dnew corresponding to the coin under test. The value of Tnew is then compared with a limit value L3 at step S6.9. The limit value L3 corresponds to the fixed window limit W2 shown in
Conversely, if the Tnew exceeds the fixed window limit L3 then the coin should be rejected as shown at step S6.11.
In the event that the test of step S6.6 indicates the validator to be under attack, the value of Dnew for the coin under test is transformed using the amplification factor set at step S6.3 or S6.5. The transformation is carried at step S6.8 so that the parameter Tnew adopts a value of Dnew*A. The transformed or amplified value is then compared with the fixed window limited L3 at step S6.9 as previously described. Thus, when the coin acceptor is under attack by a fraudster, a more stringent test is applied to the coin data D. It will be understood that because of the amplification factor, the actual value Dnew for the coin under test needs to be much closer to the value of the mean M for the window in order to be less than the fixed limit L3 as compared with the situation where the validator is not under attack and the amplification factor A is not applied.
Thus, in accordance with the invention, a more stringent test is applied when the acceptor is under fraud attack and in accordance with the invention, a fixed window limit L3 is utilised so that there is no need to change the window position or to switch between different window widths to achieve automatic security protection.
Many modifications and variations fall within the scope of the invention. For example, in certain situations, it may be preferable to test the value of AVGDN against the limit value L1 after testing the value of Max Dn against limit L2. Also, the value of the amplification factor is not limited to the values given above and can be altered according to particular circumstances.
In the example described hereinbefore, the acceptability criteria corresponding to the limits L1 and L2 constitute fraud criteria for determining when a fraud attack occurs, and one or more amplification factors greater than one (A>1) are used in order to provide enhanced discrimination against frauds. However, when a run of acceptable coins has occurred, it may be advantageous to use an amplification factor 0>A<1 to increase the likelihood of coins being accepted when the risk of occurrence of a fraud is relatively low.
Also, the data used to produce the running average AVGDN and also Max Dn may be time dependent, so that coin parameter signals from coins tested more than a particular time ago will be ignored for the purposes of determining AVGDN and Max Dn.
Furthermore, the rules based expert system can include additional or alternative rules for determining the criteria under which the amplification factor A is applied in response to a fraudster. Also, different rules can be used that do not use comparisons between scaled signals and thresholds. Furthermore, transformations other than a simple amplification may be used, such as non-linear transformations, offsets and combinations thereof. For example, as shown schematically in
In the foregoing example, the processing of signals for one of the sensors S is described and it will be understood that each of sensor output is processed individually. The processing for one sensor may however take account of the outcome for another sensor and the occurrence of a fraud criterion for one of the sensors may be used to set an acceptability criterion for the processing of signals for another of the sensors.
The invention is not limited to the use of an expert, rules based system to perform the AI process shown at step S3.4 in
It will be appreciated that the various rules of the rules based system may be applied individually or collectively on a time basis so that a rule may be applied for a particularly time period and then removed either in response to a coin acceptance event or in response to external factors
It will also be appreciated that the invention is not restricted to coin validators but may be used for other money items such as tokens, banknotes, cards and other items having an attributable monetary value.
Number | Date | Country | Kind |
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0300411.6 | Jan 2003 | GB | national |
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/GB03/05453 | 12/15/2003 | WO | 00 | 11/10/2005 |
Publishing Document | Publishing Date | Country | Kind |
---|---|---|---|
WO2004/063996 | 7/29/2004 | WO | A |
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5564548 | Dobbins et al. | Oct 1996 | A |
5687830 | Hayes et al. | Nov 1997 | A |
5931277 | Allan et al. | Aug 1999 | A |
6311820 | Hallas Bell et al. | Nov 2001 | B1 |
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Number | Date | Country |
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0.072.189 | Feb 1983 | EP |
0480736 | Apr 1992 | EP |
2169429 | Jul 1986 | GB |
2-197985 | Aug 1990 | JP |
Number | Date | Country | |
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20060254877 A1 | Nov 2006 | US |