Sensor B Sensor A Sensor C Sensor D Sensor E Lightweight Mining Techniques Time Frame: 10 Time Threshold: 20.

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Presentation transcript:

Sensor B Sensor A Sensor C Sensor D Sensor E Lightweight Mining Techniques Time Frame: 10 Time Threshold: 20

Sensor B Sensor A Sensor C Sensor D Sensor E Lightweight Mining Techniques Time Threshold: 17 Time Frame: 7

Sensor B Sensor A Sensor C Sensor D Sensor E Lightweight Mining Techniques Time Threshold: 14 Time Frame: 4

Sensor B Sensor A Sensor C Sensor D Sensor E Lightweight Mining Techniques Time Threshold: 12 Time Frame: 2

Sensor B Sensor A Sensor C Sensor D Sensor E Lightweight Mining Techniques Adapt Time Threshold: 10 Time Frame: 0

Sensor B Sensor A Sensor C Sensor D Sensor E Lightweight Mining Techniques Time Threshold: 6 Time Frame: 6

Sensor B Sensor A Sensor C Sensor D Sensor E Lightweight Mining Techniques Time Threshold: 2 Time Frame: 2

Sensor B Sensor A Sensor C Sensor D Sensor E Lightweight Mining Techniques Merge Time Threshold: 0 Time Frame: 0

Sensor B Sensor A Sensor C Sensor D Sensor E Lightweight Mining Techniques Time Threshold: 20 Time Frame: 10