A method of classifying items from reflected signals returned from said items is disclosed, the method comprising: processing said return signals to discriminate between a first set of signals indicative of items of interest and a further set of signals indicative of clutter; identifying items from
A method of classifying items from reflected signals returned from said items is disclosed, the method comprising: processing said return signals to discriminate between a first set of signals indicative of items of interest and a further set of signals indicative of clutter; identifying items from said first set of signals and classifying them as a first class of item; processing said further set of signals to identify a second set of signals indicative of further items of interest; identifying items from said second set of signals and classifying them as a second class of item.
대표청구항▼
1. A method of classifying items from reflected signals returned from said items, the method comprising: processing, said return signals to discriminate between a first set of signals indicative of items of interest and a further set of signals indicative of clutter; identifying items from said firs
1. A method of classifying items from reflected signals returned from said items, the method comprising: processing, said return signals to discriminate between a first set of signals indicative of items of interest and a further set of signals indicative of clutter; identifying items from said first set of signals and classifying them as a first class of item; processing said further set of signals to identify a second set of signals indicative of further items of interest; identifying items from said second set of signals and classifying them as a second class of item; and processing signals returned from a classified item over time and maintaining said classification, reclassifying said item, or declassifying said item in dependence on said processing. 2. A method according to claim 1 wherein the signals of said first set are indicative of items at least part of each of which is moving at least in part. 3. A method according to claim 2 wherein the signals of said second set are indicative of substantially stationary items. 4. A method according to claim 1 comprising determining at least one parameter comprising at least one of: (a) at least one characteristic of a return signal from an identified item; and(b) at least one attribute of an identified item; and classifying the item accordingly. 5. A method according to claim 4 comprising maintaining a history of the at least one determined parameter for an identified item and classifying the item in dependence on said history. 6. A method according to claim 5 wherein said determined parameter history is maintained for an item from when it is first detected. 7. A method according to claim 4 comprising determining a prediction of the at least one determined parameter and classifying said item in dependence on the conformity of a signal return from the item with said prediction. 8. A method according to claim 7 wherein said prediction is refined over time in dependence on historical data. 9. A method according to claim 4 comprising comparing said determined parameter or history thereof with a modelling function and classifying the item in dependence on said comparison. 10. A method according to claim 9 comprising iteratively comparing said determined parameter or history thereof with modelling functions of increasingly higher order and classifying the item in dependence on said comparison. 11. A method according to claim 9 wherein the or at least one modelling function is at least one of: (a) mathematical function;(b) an oscillatory function; and(c) adaptive over time in dependence on historical parameter data. 12. A method according to claim 4 comprising comparing the at least one determined parameter or history thereof with a stored parameter or parameter history and classifying the item in dependence on said comparison. 13. A method according to claim 4 wherein the at least one determined parameter comprises a characteristic comprising at least one of phase, phase mismatch, and amplitude or signal strength/intensity. 14. A method according to claim 4 wherein the at least one determined parameter comprises an attribute comprising at least one of position, range, range rate, velocity, acceleration, track, and trajectory. 15. A method according to claim 1 comprising determining a velocity of at least part of each identified item from said return signals and classifying the item accordingly. 16. A method according to claim 15 wherein an item is classified as said first class of item if at least one of the following applies: (a) said velocity is non-zero;(b) said velocity is nonzero for a predetermined number or percentage of scans; and(c) said velocity is non-zero when averaged over time. 17. A method according to claim 15 wherein an item is classified as said second class of item if at least one of the following applies: (a) said velocity is zero;(b) said velocity is zero for a predetermined number or percentage of scans; and(c) said velocity is below a predetermined threshold when averaged over time. 18. A method according to claim 1 wherein an item classified as said first class of item remains so classified for at least a predetermined number of scans after reflected signals from said item are no longer received. 19. A method according to claim 1 wherein said classification is dependent on a confidence level that said item has been correctly classified as a first or second class of item. 20. A method according to claim 1 wherein when an item is classified said classification persists in dependence on a confidence level that said item has been correctly classified. 21. A method according to claim 1 wherein said classified item is initially classified as a second class of item and as a result of said processing over time said item is reclassified as a first class of item. 22. A method according to claim 1 comprising processing return signals from items classified as items of said first class or said second class and further classifying said items into different classes or sub-classes. 23. A method according to claim 1 wherein each classification is stored in a classification history for the item to which the classification relates. 24. A method according to claim 1 wherein said classification comprises deriving an indication of a material type for an item from the corresponding return signals and classifying the item accordingly. 25. A method according to claim 1 comprising classifying an item in dependence on its interaction with another item. 26. A method according to claim 25 wherein said interaction comprises one of the items moving behind the other. 27. A method according to claim 1 comprising identifying a cluster of responses from different parts of an item and classifying the item in dependence on the nature of said cluster. 28. A method according to claim 27 wherein said cluster comprises between three and fifteen responses. 29. A method according to claim 27 wherein said cluster comprises ten responses. 30. A method according to claim 1 comprising determining a threat level for an item and classifying said item into a class or sub-class accordingly. 31. A method according to claim 1 wherein each classification, reclassification, and/or declassification is stored in a classification history for the item to which it relates. 32. Apparatus for classifying items from reflected signals returned from said items, the apparatus comprising: a receiver for receiving said return signals; anda processor for processing said return signals, said processor being configured for: processing said return signals to discriminate between a first set of signals indicative of items of interest and a further set of signals indicative of clutter;identifying items from said first set of signals and classifying them as a first class of item;processing said further set of signals to identify a second set of signals indicative of further items of interest;identifying items from said second set of signals and classifying them as a second class of item; andprocessing signals returned from a classified item over time and maintaining said classification, reclassifying said item, or declassifying said item in dependence on said processing. 33. Apparatus according to claim 32 comprising means for outputting a representation of each classified item for display, and means for displaying said representation. 34. Apparatus according to claim 32 comprising means for outputting an alert signal if the classification of an item changes and means for issuing an associated alert. 35. Apparatus according to claim 32 wherein the processing means comprises means for extracting at least one parameter comprising at least one of: (a) a characteristic of a return signal from an identified hem; and (b) an attribute of an identified item; and for classifying the item accordingly. 36. Apparatus according to claim 32 wherein said classified item is initially classified as a second class of item and said processor is operable to, as a result of said processing over time, reclassify said item as a first class of item. 37. Apparatus according to claim 32 wherein the processor is operable to store each classification, reclassification, and/or declassification in a classification history for the item to which it relates. 38. Apparatus for classifying items from reflected signals returned from said items, the apparatus comprising: a receiver for receiving said return signals;a processor for processing said return signals said processor being configured for: processing said return signals to discriminate between a first set of signals indicative of items of interest and a further set of signals indicative of clutter;identifying items from said first set of signals and classifying them as a first class of item;processing said further set of signals to identify a second set of signals indicative of further items of interest; andidentifying items from said second set of signals and classifying them as a second class of item;wherein an item classified as said first class of item remains so classified for at least a predetermined number of scans after reflected signals from said item are no longer received. 39. A method of classifying items from reflected signals returned from said items, the method comprising: processing said return signals to discriminate between a first set of signals indicative of items of interest and a further set of signals indicative of clutter;identifying items from said first set of signals and classifying them as a first class of item;processing said further set of signals to identify a second set of signals indicative of further items of interest;identifying items from said second set of signals and classifying them as a second class of item; andprocessing return signals from items classified as items of said first class or said second class and further classifying said items into different classes or sub-classes. 40. A method according to claim 39 wherein each classification, reclassification, and/or classification into a sub-class is stored in a classification history for the item to which it relates. 41. Apparatus for classifying items from reflected signals returned from said items, the apparatus comprising: a receiver for receiving said return signals;a processor for processing said return signals said processor being configured for: processing said return signals to discriminate between a first set of signals indicative of items of interest and a further set of signals indicative of clutter;identifying items from said first set of signals and classifying them as a first class of item;processing said further set of signals to identify a second set of signals indicative of further items of interest;identifying items from said second set of signals and classifying them as a second class of item; andprocessing return signals from items classified as items of said first class or said second class and further classifying said items into different classes or sub-classes. 42. A method according to claim 41 wherein said processor is operable to store each classification, reclassification, and/or classification into a sub-class in a classification history for the item to which it relates. 43. A method of classifying items from reflected signals returned from said items, the method comprising: processing said return signals to discriminate between a first set of signals indicative of items of interest and a further set of signals indicative of clutter;identifying items from said first set of signals and classifying them as a first class of item;processing said further set of signals to identify a second set of signals indicative of further items of interest; andidentifying items from said second set of signals and classifying them as a second class of item;wherein each said classification is stored in a classification history for the item to which the classification relates. 44. Apparatus for classifying items from reflected signals returned from said items, the apparatus comprising: a receiver for receiving said return signals;a processor for processing said return signals said processor being configured for: processing said return signals to discriminate between a first set of signals indicative of items of interest and a further set of signals indicative of clutter;identifying items from said first set of signals and classifying them as a first class of item;processing said further set of signals to identify a second set of signals indicative of further items of interest; andidentifying items from said second set of signals and classifying them as a second class of item;wherein each said classification is stored in a classification history for the item to which the classification relates. 45. A method of classifying items from reflected signals returned from said items, the method comprising: processing said return signals to discriminate between a first set of signals indicative of items of interest and a further set of signals indicative of clutter;identifying items from said first set of signals and classifying them as a first class of item;processing said further set of signals to identify a second set of signals indicative of further items of interest; andidentifying items from said second set of signals and classifying them as a second class of item;wherein said identifying items from said first set of signals and classifying them as a first class of item and/or said identifying items from said second set of signals and classifying them as a second class of item comprises identifying a cluster of responses from different parts of an item and classifying the item in dependence on the nature of said cluster. 46. A method according to claim 45 wherein said cluster comprises between three and fifteen responses. 47. A method according to claim 46 wherein said cluster comprises ten responses. 48. Apparatus for classifying items from reflected signals returned from said items, the apparatus comprising: a receiver for receiving said return signals;a processor for processing said return signals said processor being configured for: processing said return signals to discriminate between a first set of signals indicative of items of interest and a further set of signals indicative of clutter;identifying items from said first set of signals and classifying them as a first class of item;processing said further set of signals to identify a second set of signals indicative of further items of interest; andidentifying items from said second set of signals and classifying them as a second class of item;wherein said identifying items from said first set of signals and classifying them as a first class of item and/or said identifying items from said second set of signals and classifying them as a second class of item comprises identifying a cluster of responses from different parts of an item and classifying the item in dependence on the nature of said cluster. 49. A method according to claim 48 wherein said cluster comprises between three and fifteen responses. 50. A method according to claim 49 wherein said cluster comprises ten responses. 51. A method of classifying items from reflected signals returned from said items, the method comprising: processing said return signals to discriminate between a first set of signals indicative of items of interest and a further set of signals indicative of clutter;identifying items from said first set of signals and classifying them as a first class of item;processing said further set of signals to identify a second set of signals indicative of further items of interest; andidentifying items from said second set of signals and classifying them as a second class of item;wherein an item classified as said first class of item remains so classified for at least a predetermined number of scans after reflected signals from said item are no longer received.
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