Hi all, some of you may like to try this (it's relatively quick even when you set the formula iterations parameter as high as say 200) - note that not all parameter options are functional since I've decided to impliment all my 3D stuff in future as class formulas.
It's a long time since I wrote this but I *think* it's solid based on iteration density rather than based on iteration but I wouldn't swear to it - I haven't reviewed what I did, I just know it's not using DE
Just copy the entire thing and it should paste into UF (4 or 5).
Fractal1 {
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}
3D_beta_0.6.ufm:3DComplexGlobalbeta0.6 {
;
; Extremely beta complex 3D formula
; © David Makin 2006
;
; |x,y,0,1||m2r0c0*m1r0c0+m2r0c1*m1r1c0+m2r0c2*m1r2c0
; m2r0c0*m1r0c1+m2r0c1*m1r1c1+m2r0c2*m1r2c1
; m2r0c0*m1r0c2+m2r0c1*m1r1c2+m2r0c2*m1r2c2 |
; |m2r1c0*m1r0c0+m2r1c1*m1r1c0+m2r1c2*m1r2c0
; m2r1c0*m1r0c1+m2r1c1*m1r1c1+m2r1c2*m1r2c1
; m2r1c0*m1r0c2+m2r1c1*m1r1c2+m2r1c2*m1r2c2 |
; |m2r2c0*m1r0c0+m2r2c1*m1r1c0+m2r2c2*m1r2c0 (0)
; m2r2c0*m1r0c1+m2r2c1*m1r1c1+m2r2c2*m1r2c1 (0)
; m2r2c0*m1r0c2+m2r2c1*m1r1c2+m2r2c2*m1r2c2 (0) |
; |-camdist*m1r2c0 + tx
; -camdist*m1r2c1 + ty
; -camdist*m1r2c2 + tz |
;
; |x,y,0,1|| m1r0c0 m1r0c1 0 0 || m0r0c0 m0r0c1 m0r0c2 0 |
; | m1r1c0 m1r1c1 0 0 || m0r1c0 m0r1c1 m0r1c2 0 |
; | 0 0 0 0 || m0r2c0 m0r2c1 m0r2c2 0 |
; | realc imagc 0 1 || m0r3c0 m0r3c1 m0r3c2 1 |
;
; |x,y,0,1|| m1r0c0*m0r0c0 + m1r0c1*m0r1c0
; m1r0c0*m0r0c1 + m1r0c1*m0r1c1
; m1r0c0*m0r0c2 + m1r0c1*m0r1c2 |
; | m1r1c0*m0r0c0 + m1r1c1*m0r1c0
; m1r1c0*m0r0c1 + m1r1c1*m0r1c1
; m1r1c0*m0r0c2 + m1r1c1*m0r1c2 |
; | 0 0 0 |
; | realc*m0r0c0+imagc*m0r1c0+m0r3c0
; realc*m0r0c1+imagc*m0r1c1+m0r3c1
; realc*m0r0c2+imagc*m0r1c2+m0r3c2 |
;
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