|
In this paper, we present an approach for human fall de-
tection, which has an important application in the field of safety and
security. The proposed approach consists of two part: object detection
and fall model. We use an adaptive background subtraction method to
detect moving object and mark it with minimum-bounding box. Fall
model uses a set of extracted features to analyze, detect and confirm
the fall. We implement a two-state finite state machine (FSM) to con-
tinuously monitor people and their activities. Experimental results show
that our method can detect all possible types of human fall accurately
and successfully.
| |