Twin hat

Twin hat (or twin peaks, or bi-hat) is a 17-cell still life that roughly consists of two hats.

Twin hat
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Pattern type Strict still life
Number of cells 17
Bounding box 9×5
Frequency class 18.2
Discovered by Unknown
Year of discovery Unknown

Commonness

Twin hat is the thirty-sixth most common still life in Achim Flammenkamp's census, being less common than block on dock but more common than beehive on dock.[1] The twin hat is also the fourty-eighth most common object on Adam P. Goucher's Catagolue.[2]

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gollark: It was a joke...

See also

References

  1. Achim Flammenkamp (September 7, 2004). "Most seen natural occurring ash objects in Game of Life". Retrieved on January 15, 2009.
  2. Adam P. Goucher. "Statistics". Catagolue. Retrieved on June 24, 2016.
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