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What are ghost targets?
Ghost targets are false positives in people-counting systems: sensor readings that the system interprets as people when none are present or when the count is wrong.
- Spurious single detections where no person exists.
- Duplicate detections of the same person producing an inflated count.
- Transient blips caused by moving objects or reflections.
Ghost targets degrade trust in analytics, skew operational decisions, and can cause wasted energy or incorrect safety responses. Understanding their root causes helps you choose and configure sensors to minimize errors.
Common causes of ghost targets
- Multipath reflections: Sensor signals bounce off walls, glass, or metallic surfaces and return from unexpected directions.
- Occlusion and fragmentation: Partial views of a person cause algorithms to detect multiple small objects instead of one.
- Environmental motion: HVAC vents, curtains, pets, or moving equipment can register as people.
- Sensor noise and interference: Electronic noise, radio interference, or low signal-to-noise ratio trigger false detections.
- Algorithm thresholds and tuning: Over-sensitive detection thresholds or naive merging logic create duplicates.
Each sensing technology experiences these causes differently. Effective reduction strategies combine the right hardware with robust software filtering and thoughtful deployment.
How radar and depth sensors produce ghost targets
Radar sensors
Strengths and weaknesses of radar for people-counting.
- Strengths: Good range and motion detection; works in low light.
- Weaknesses: Prone to multipath reflections and specular returns that create ghost targets. Signals can bounce off shiny or metallic surfaces and appear as phantom people. Radar also struggles to differentiate stationary people from background if algorithms rely on movement.
Depth sensors and stereo cameras
How depth and stereo systems behave in typical indoor deployments.
- Strengths: Provide 3D information and can distinguish between objects and people by shape.
- Weaknesses: Sensitive to occlusion and fragmentation when people cluster or overlap; reflective surfaces and glass can confuse depth calculations. Performance can degrade in bright sunlight or with dust and fog.
Both sensor classes can benefit from sensor fusion and advanced processing, but they often require more calibration and site-specific tuning to suppress ghosting effectively.