Understanding Ghost Targets in People‑Counting Systems
Practical guide to what causes false "ghost" detections in people-counting systems and how to reduce them using sensor choice, placement, processing, and validation.

People-counting systems inform decisions about space use, HVAC scheduling, safety, and retail analytics. A frequent issue is the appearance of false detections or "ghost" targets that look like people but are not, degrading analytics and automation.
In this article the technical meaning of ghost is used: a ghost or false target is a sensor output that incorrectly indicates a person or valid moving object where none exists. This is different from pop-culture uses or intentional decoys.
A ghost target is any sensor reading or track that appears like a real person to the counting algorithm but is not caused by an actual human presence. Ghosts can persist, appear intermittently, or be transient noise that inflates counts.
Ghosts may look like extra people in a crowd, phantom moving objects in a corridor, or a persistent detection in an empty room.
Ghosts result from interactions among hardware, environment, and software. Typical causes include: