Ghost Targets in People Counting: Causes and Mitigation
Overview of ghost targets in people counting, their causes, and practical steps to reduce false positives with emphasis on anonymous thermal sensing.

A ghost target is a spurious detection reported by an occupancy or people counting sensor that does not correspond to a real person. Ghosts can appear as single false counts, repeated phantom tracks, or transient blips that interfere with analytics and decision making.
Ghost targets arise from hardware limitations, environmental effects, or algorithmic errors. Typical causes include:
Sensitive to motion and can see through some materials. Prone to multipath reflections and ghosting in complex indoor geometries. Performance depends heavily on signal processing and filtering.
Provide shape and depth information and can distinguish people from objects. However, reflective surfaces, strong sunlight, and privacy concerns limit deployment. Sensors may generate false tracks from reflections and overlapping fields.
High detail and good for verification, but subject to occlusion, lighting changes, and privacy regulations. False positives arise from pets, mannequins, or moving objects.
Detects heat signatures rather than visible appearance. Because it measures thermal profiles and motion patterns, it is inherently privacy preserving and less affected by visual clutter. Thermal sensors reduce many common causes of ghosting, especially reflections and visual occlusion.