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to still images and low framerate cameras without performance degradation. On
the other hand, if normal video frame rates and sucient computing power are
available, the method could be improved further by implementing temporal hys-
teresis, whereby multiple subsequent alerts are required before the alarm is set
off. The model uses insignificant amounts of memory (typically 256 bytes) and
the block-based processing suits parallel implementation, making the method
ideal for implementation on dedicated hardware (e.g. FPGAs) to speed up
computation.
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