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From ; here, use the Switch feature again to select the second Julia ; point. ; ::w3C3jjn2daVUvttNQ43DQ+PcrDoxuz2VSD7l6GAvi6Akiilhlu3KKAt0ZLWQRyJSFHH0f87O SKZH7m1umHitOe33d33x7TWql+Xd+ZA8AcJkd+Z8XlaPYpHXYFeP2qnD36FtepeDksM4lC1b 81kvrVGT7IlZzI74XyfknNe8cQ31sCbBzaoSuR6dUUgvG7xZCMFyHArpTNgUe2nSgToQH4lW lkQybgNoHU4afjx5jwOgQ4JuRmDdOsCWbaB8efro0TPN47bu5m3DsfX97v/2lslrvCGRt8lQ RO88nDLcbl+yaHiVOK/OLWKFKwY9yG5DEUHwDQApP8X/9SyRmnAK26QXao/1CMKsjL/j3e9V MDTNo9VHl1vvs8T+5QrxL8DMIY0IlW0GdiR0Pm7eea5wSjuaoA4/4x8Dfah1slqsfB+Zr8eU FPcJxF9RuW2Sk7/RgL4zyTB23YRMiGHmFx5pFeZYAP+b0A89uR2pxofRIiXknRJ0OM9id5xj I+TwVb6UVwKCxtCrdf1PUN/KdjL+Q4KyXZMN0P9ZqP2Lh8x/Y8zBE7/zRSflMQxrESlpLuy+ lH+C8aYRyEfaFuWQ7KhT9SvCJof276USRBtDjWI/Z8R1oyuWGPtq5zTtdr+Y6zpdrn+5iZ1+ mgnNi7l0UicMPLLjtUi6ohRTzm9bTyGHH8WRroBOopLF01YjeoAgbpzS5HgUhywkFwgNWz7w k/foWSCFuwsJS0REY0nACgYQaRj335kic5stWWWDfsnSj/RJRqxIOuahFZdoAosggQNLUMou KgzBdx+bWn0L3GOL0MuT6lB5k99y1cGjtDqFrUcHwlw+OyR6FK1B3ZnBQgBOqbUIJfuz0B+2 dBIEKe/hXluYtScnp9CINqZBI6GBN90dClaXPUhEw3CjSwJyz9U8wjkfOkD4J5fGP8EOoIN/ bksv5FPmOe7BjkeBAyx44jN63aOiVYh8ZHTGLFk/x9SpuSWSsQaOz1G9SCKqJQOQ6/FzJ4RN RXqeUSvLqWcHSZgOjzxkHVUtoFFeXYWgDtXKe6aE9eiNy7SJ10SAqJp7E/vCJolm2nkY5V9T o1l3bJtQt/0VkiTWRu5OslbIMFT4Ndcpg/TngBkK8QYpq8I6j9sUJcOZZ6mofnFfqydQg5oC +NR7nUv5zywisv+gv2sFcGKeBp83uimfM6OgwZCInhzgKD60XQ2Rlhuqeclb2v+UQTbPB0uG T7JF/5nFXjjahU31L2FDdKLHWEiJIax/cnB1L+LFkl9SxHIJE88xKE9Xa2/TmCWDC6st+xdi IZbDc6/Cdjm09B== } dmj.ucl:dmj-Smooth2 { ; ; This coloring method provides smooth iteration ; colors for all divergent fractal types. It was ; developed by Ron Barnett. It doesn't map ; precisely to iterations, but it's close. ; ; Note: You can achieve exactly this coloring by ; using the Orbit Traps coloring, with a merge ; mode setting of "funky average 4" and a distance ; transfer function of "sqrt". However, this ; formula is probably easier to add. ; ::yBCe6hn2t04uOMIMMU09Il/BLYBUVQMXpu1+F01uEKOgrceoiTFqf9FIdxW6cP2XKQyZtCAH HtCsk9wFovrfHpVcMmOSL895JAXTNmn2hlm6vttalW5oglP8qpwIuWULvYEd2MX6QIhxtwqb rpYADCZZ4uPGlZKMBNXpP47pNeb1u+MyJHVuY0/ykyDP+vNZnBX6mF/m5PA63mDR }