The present invention relates to a method and apparatus for monitoring a structure and, in particular, but not exclusively, to monitoring a barrier to determine an intrusion across the barrier. The barrier may be a fence or other partition, or a region of the ground. In other embodiments, the structure may be other than a barrier or region of the ground which is to be monitored for intrusion and may comprise a mechanical device or the like, a communication network, or other machine.
One of the challenges of all sensing systems is to be able to operate in a number of hostile environments. Intrusion detection systems, which are often installed in outdoor environments and need to operate during periods of heavy wind or rain, or close to nearby traffic crossings, are no exception.
In any sensing system, a nuisance alarm can be defined as an alarm caused by an event that is not of interest for that sensing system. For intrusion detection systems, this relates to non-intrusion events such as wind, rain, vehicular traffic and other environmentally related non-intrusion events. Nuisance alarms can adversely affect the performance of intrusion detection systems, as well as the confidence of the system operator. The minimization of the nuisance alarm rate of intrusion detection systems, and indeed of any sensing system, is therefore critical for its successful performance and confidence of operation.
An important part of nuisance alarm handling involves being able to recognize the nuisance event being detected by the sensing system, as well as being able to discriminate between nuisance events and intrusion events. A number of different signal processing techniques can be used to achieve this and can range from simple filtering techniques, to adaptive filtering techniques, to a number of time-frequency analyses. The crux of all event recognition and discrimination techniques is the signal classification process, which involves extracting and identifying unique features in event signals. The event signals may represent isolated individual events (for example intrusion, rain, wind or traffic), or a number of events occurring simultaneously (for example, an intrusion event during heavy rain). In this latter case of simultaneously occurring events, an effective technique for extracting the event of interest from the event of non-interest is required.
In some instances it is also desirable to be able to classify the particular type of nuisance event.
The intrusion detection system may be of the type described in U.S. Pat. Nos. 6,621,947 and 6,778,717, and U.S. patent application Ser. No. 11/311,009. It is based on a bidirectional Mach Zehnder (MZ) which can be used as a distributed sensor to detect and locate a perturbation anywhere along its sensing arms. It will be referred to as a locator sensor. The content of these patents and the application are incorporated into this specification by this reference.
The object of a first aspect of the invention is to provide method and apparatus for distinguishing between an event of interest and a nuisance event.
The present invention provides apparatus for monitoring a structure comprising:
The sensing device may be comprised of a number of different technologies, such as electrical devices, acoustic or seismic devices, or optical devices.
In the preferred embodiment of the invention the sensing device comprises:
Preferably the processor is for defining a plurality of block durations of a predetermined time interval, setting a noise level threshold, monitoring the number of level crossings exceeding the noise level threshold per block duration for a predetermined noise detection duration period comprised of a number of block durations, setting a noise amplitude variation being a predetermined number of level crossings per block, so that if the number of level crossings in a noise detection duration does not vary by more than the noise amplitude variation, the signal over the noise detection duration period is regarded as a nuisance event.
Preferably the processor is also for establishing an event threshold level which is a number of level crossings per noise detection duration period above the noise amplitude variation so that if the number of level crossings in one or more block duration periods is above the event threshold level, a required event is regarded having occurred.
Preferably the event threshold is a dynamic threshold and changes relative to the background nuisance level dependent on the nuisance events detected by the processor.
Preferably the processor determines the event threshold level so that the event threshold level is equal to the sum of the maximum number of level crossings over the last noise detection duration period and event threshold margin.
Preferably the event threshold margin is a predetermined margin.
Preferably the processor is also for generating an alarm when a required event is detected.
The invention also provides a method of monitoring a structure comprising:
Preferably the monitoring step comprises launching light into a waveguide and detecting light from the waveguide to provide a detected signal.
Preferably the method further comprises defining a plurality of block durations of a predetermined time interval, setting a noise level threshold, monitoring the number of level crossings over the noise level threshold per block duration for a predetermined noise detection duration period comprised of a number of block durations, setting a noise amplitude variation being a predetermined number of level crossings per block, so that if the number of level crossings in a noise detection duration does not vary by more than the noise amplitude variation, the signal over the noise detection duration period is regarded as a nuisance event.
Preferablyy the method establishes an event threshold level which is a number of level crossings per noise detection duration period above the noise amplitude variation so that if the number of level crossings in one or more block duration periods is above the event threshold level, a required event is regarded having occurred.
Preferably the event threshold is a dynamic threshold and changes relative to the background nuisance level dependent on the nuisance events detected by the processor.
Preferably the method determines the event threshold level so that the event threshold level is equal to the sum of the maximum number of level crossings over the last noise detection duration period and event threshold margin.
Preferably the event threshold margin is a predetermined margin.
Preferably the method generates an alarm when a required event is detected.
The invention also provides a system for monitoring a structure comprising:
In one embodiment the method further comprises defining a plurality of block durations of a predetermined time interval, setting a noise level threshold, monitoring the number of level crossings in the detected signal over the noise level threshold per block duration for a predetermined noise detection duration period comprised of a number of block durations, setting a noise amplitude variation being a predetermined number of level crossings per block, so that if the number of level crossings in a noise detection duration does not vary by more than the noise amplitude variation, the signal over the noise detection duration period is regarded as a nuisance event.
In another embodiment of the invention the processor is for determining the occurrence of a required event from the processing of the detected signal to determine level crossing rates to produce a signal indicative of a combined nuisance event and required event, and a signal indicative of only the nuisance event, the processor being for performing a fast Fourier transform on both signals to convert the signals to the frequency domain, removing selected frequencies in the signal indicative of only the nuisance event from the combined nuisance and event signal to produce a signal containing only event data to enable an intrusion event to be determined.
Preferably the sensing device comprises:
Preferably the occurrence of an event to produce the combined nuisance and event signal is determined by the processor by the number of level crossings exceeding an event threshold.
Preferably the signal indicative of the nuisance event is determined from a duration of the signal in which no required event is present.
In the preferred embodiment of the invention the required event is an intrusion on or over the structure.
In the preferred embodiment of the invention the method and apparatus also locates the location of the intrusion from counter-propagating optical signals launched into the waveguide and the time difference between receipt of modified counter-propagating signals which are modified by the event.
The invention also provides a method of monitoring a structure comprising:
Preferably the monitoring step comprises:
In one embodiment the method further comprises defining a plurality of block durations of a predetermined time interval, setting a noise level threshold, monitoring the number of level crossings in the detected signal over the noise level threshold per block duration for a predetermined noise detection duration period comprised of a number of block durations, setting a noise amplitude variation being a predetermined number of level crossings per block, so that if the number of level crossings in a noise detection duration does not vary by more than the noise amplitude variation, the signal over the noise detection duration period is regarded as a nuisance event.
In another embodiment the method further comprises determining level crossing rates to produce a signal indicative of a combined nuisance event and required event, and a signal indicative of only the nuisance event, performing a fast Fourier transform on both signals to convert the signals to the frequency domain, removing selected frequencies in the signal indicative of only the nuisance event from the combined nuisance and event signal to produce a signal containing only event data to enable an intrusion event to be determined.
Preferably the occurrence of an event to produce the combined nuisance and event signal is determined by the number of level crossings exceeding an event threshold.
Preferably the signal indicative of the nuisance event is determined from a duration of the signal in which no required event is present.
In the preferred embodiment of the invention the required event is an intrusion on or over the structure.
In the preferred embodiment of the invention the method and apparatus also locates the location of the intrusion from counter-propagating optical signals launched into the waveguide and the time difference between receipt of modified counter-propagating signals which are modified by the event.
This aspect of the invention may also be said to reside in an apparatus for monitoring a structure comprising:
Preferably the sensing device comprises:
Preferably the processor determines the signal indicative of a combined nuisance event and required event by determining the number of level crossings in the detected signal exceeding an event threshold.
Preferably the processor determines the signal indicative of the nuisance event from duration of the detected signal in which no required event is present
This aspect of the invention may also be said to reside in a method of monitoring a structure comprising:
Preferably the monitoring step comprises:
Preferably the method determines the signal indicative of a combined nuisance event and required event by determining the number of level crossings in the detected signal exceeding an event threshold.
Preferably the method determines the signal indicative of the nuisance event from duration of the detected signal in which no required event is present
An object of a second aspect of the invention is to be able to classify various events in a method and system for monitoring a structure to determine the occurrence of a required event.
This aspect of the invention may be said to reside in an apparatus for monitoring a structure to determine the occurrence of a required event, comprising:
Preferably the sensing device comprises:
Preferably the detector signal is also processed to determine level crossing rates in the signal and from those rates, distinguish between noise in the signal and the required event.
In one embodiment the number of level crossings in the detected signal when a required event is detected is determined by the processor and the predetermined features are selected from the group comprising:
In one embodiment of the invention the processor has a classifier having a neural network for receiving the predetermined features and for determining the class of the event.
In another embodiment the processor has a linear classifier to define a boundary between classes of intrusion events so that an intrusion event is classified according to where the intrusion event as represented by the predetermined features occurs relative to the line.
In another embodiment of the invention the predetermined features are time frequency based features.
In this embodiment the features are determined by performing a fast Fourier transform on the signal during the event interval, determining a centre frequency and using a comparison of centre frequencies determined during the event to classify the event.
This aspect of the invention may be said to reside in method of monitoring a structure to determine the occurrence of a required event, comprising:
Preferably the monitoring step comprises:
Preferably the detector signal is also processed to determine level crossing rates in the signal and from those rates, distinguish between noise in the signal and the required event.
In one embodiment the number of level crossings in the detected signal when a required event is detected is determined, and the predetermined features are selected from the group comprising:
In one embodiment a line to define a boundary between classes of intrusion events so that an intrusion event is classified according to where the intrusion event as represented by the predetermined features occurs relative to the line.
In another embodiment of the invention the predetermined features are time-frequency based features.
In this embodiment the features are determined by performing a fast Fourier transform on the signal during the event interval, determining a centre frequency and using a comparison of centre frequencies determined during the event to classify the event.
A preferred embodiment of the invention will be described, by way of example, with reference to the accompanying drawings in which:
Referring to
By measuring and analysing the level crossing rates (LCR) of a number of different intrusion and nuisance event signals obtained from a number of installed locator systems in the field, the LCR can form the basis of both event signal recognition and discrimination techniques for reducing nuisance alarm rates. In particular, using the LCR technique with fence-mounted locator systems of the type described in the above US patents and application, zero nuisance alarm rates due to heavy rain have been achieved, as well as the accurate detection and location of intrusion events, such as climbing, during periods of heavy rain.
LCR (Level Crossing Rate) is defined as the number of times per unit duration that the envelope of a signal in the time domain crosses a given value in the positive direction.
The LCR technique is defined by the number of crossings (in the positive direction) of an input vector through a given threshold. The implemented LCR can be given by
where x is a signal of length N, the parametera is the level threshold, and the indicator function Ψ{K} is 1 if its argument K is true, or 0 otherwise.
This can be applied to the event signals received by the fibre optic locator system described in
Any combination of these features can be used to determine fixed thresholds for defining particular nuisance events, whilst an adaptive threshold can be used to detect an intrusion event during a simultaneous nuisance event.
The use of the LCR technique described previously to detect and recognize nuisance signals caused by heavy rain on fence-mounted fibre optic intrusion detection systems, as well as the detection of climbing events during continuous periods of heavy rain is now described.
With reference to
Light from a laser source 10 is launched into a coupler C1 which in turn launches the light into polarisation controllers for both the clockwise and counter clockwise directions 12 and 14 respectively. The light is then launched through couplers C2 and C3 into a lead in optical fibre 16 and a lead in optical fibre 18. The fibre 16 is connected to a coupler C4 so that the light from the lead-in fibre 16 propagates through sensing fibres 20 and 22 in the clockwise direction and then through a coupler C5 to the lead in fibre 18 and back through coupler C3 to detector Det2. Light from the fibre 18 is received by coupler C5 and launched in the counter clockwise direction into the sensing fibres 20 and 22 and propagates through the coupler C4 to the lead-in fibre 16 and through coupler C2 to the detector Det1.
The detectors Det1 and Det2 are connected to a processor 50 schematically shown in controller unit 5 of
According to the preferred embodiments of the present invention, the processor 50 also discriminates between events such as various different classes of required events such as cutting or climbing a fence, as well as different nuisance events caused by rain, wind and other environmental activity, as well as other nuisance events such as the throwing of stones against a fence or other human caused nuisance events.
The processor 50 discriminates between the nuisance events and an actual intrusion event so that only intrusion events are made the subject of an alarm to identify an intrusion or other event which is of interest, as well as providing information as to the specific nature of the nuisance events which are being caused.
The manner in which nuisance events are discriminated from actual required events will be described with reference to
With reference to
For each block the number of signal “Level Crossings” is counted. A “Level Crossing” is said to have taken place when the acquired signal goes from below a specified “Noise Level Threshold” to above that threshold. The “Noise Level Threshold” is set to be just above the background system noise and, for example, can be set to 0.085 volts by the processor 50 if the system noise is 0.083 volts.
The number of “Level Crossings” for each “Block” is then monitored to allow the signal to be classified according to predetermined criteria. An “Event”, that is, an intrusion event, is said to have occurred when the number of Level Crossings within a block goes above a specified “Event Threshold” (see
The number of “Level Crossings” per block is monitored for a period of time known as the “Noise Detect Duration” (
An example of a heavy rain nuisance signal as obtained from a fence mounted fibre optic locator system is shown in
A required event (or intrusion event) is said to have occurred when the number of “Level Crossings” in a given block goes above an “Event Threshold”. The “Event Threshold” is dynamic as it changes depending on the amount of Background Environmental Noise currently in the system, which can change as the intensity of the rain varies.
Whenever a new block is received, the method and apparatus determine whether or not the signal is just background noise. If the signal is just background noise then the current “Event Threshold” is updated. The new “Event Threshold” will equal the maximum “Level Crossing” count over the last “Noise Detect Duration” plus the “Event Threshold Margin”.
An example of detecting and identifying an intrusion event during a heavy rain period using the locator intrusion detection system on a 1.6 km fence perimeter is shown in
The example in
The LCR technique described above can also be applied to other nuisance events such as wind, vehicle traffic and train traffic.
With reference to
In some situations, the contribution of the nuisance signal to the combined nuisance-event signal can affect the accuracy of the location calculation in the locator sensing system. This is especially the case when the background nuisance or noise signal forms a significant part of the overall signal.
The Frequency Domain Denoising (FDD) method reduces the amount of background nuisance or noise level in the combined nuisance and intrusion event signal and improves the event signal's signal-to-noise ratio (SNR). This method is used in conjunction with the LCR technique described earlier to characterize both the nuisance or noise background signal, and to identify when the event signal of interest occurs.
As an example, the FDD approach for extracting an event signal from a strong background nuisance heavy rain signal is summarised as follows:
With reference to
This technique essentially removes a significant amount of the background nuisance or noise contribution from the combined nuisance-intrusion signal which in effect extracts the intrusion component from the total signal.
Different types of intrusions can be identified since they can generate unique vibration signals with different signatures.
Four features are extracted from
In
The slope is therefore given by (y2-yl) divided by (x2-x1).
As is apparent from
In one embodiment shown in
After extraction of the feature vectors from the signal, decision is then taken about the class the signal belongs to (whether cutting or climbing event). This process is performed with an appropriate classifier such as a neural network. For every point in a feature space, a corresponding class is defined by mapping the feature space to the decision space. The borders between the classes are formed by training the neural network. This is done with a suitable set of cut and climb event data. Once borders are fixed with a set of training data, the performance of the classifier is tested with a set of test events (cut and climb) that is independent of the training set.
The extracted level crossing base features described previously for the cutting and climbing events can be used as inputs to the neural network. The neural network is efficient regardless of data quantities. Neural networks can learn from examples and once trained, are extremely fast algorithms making them suitable for real time application. Event classification by a neural network does not require any statistical assumptions regarding the data. The network learns to recognize the characteristic features of the data to classify the data efficiently and accurately.
In another embodiment of the invention a linear classifier can be used to classify events such as a stone-throwing event, fence cutting event or fence climbing event. The purpose of this classifier is to set boundaries between various classes and this type of classifier is suitable for classes, that is particular events, that have little or no overlap between them for a set of given features.
As can be seen from
Similar comments apply to
In
It will be understood to persons skilled in the art of the invention that many modifications may be made without departing from the spirit and scope of the invention.
In the claims which follow and in the preceding description of the invention, except where the context requires otherwise due to express language or necessary implication, the word “comprise” or variations such as “comprises” or “comprising” is used in an inclusive sense, i.e. to specify the presence of the stated features but not to preclude the presence or addition of further features in various embodiments of the invention.
Number | Date | Country | Kind |
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2007901755 | Apr 2007 | AU | national |
2007904158 | Aug 2007 | AU | national |
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/AU2008/000420 | 3/26/2008 | WO | 00 | 11/12/2009 |
Publishing Document | Publishing Date | Country | Kind |
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WO2008/119107 | 10/9/2008 | WO | A |
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