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<!-- hp-hq+1 = 1-(hq-hp), with the right alpha :) -->
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<!-- hp-hrgb+1 = 1-(hrgb-hp), with the right alpha :) -->
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<!-- Computes (1/10)*(1/(hq-hp)) -->
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<!-- 10*(hrgb-hp)*(1/10)*(1/(hq-hp)) = (hrgb-hp)/(hq-hp) -->
<!-- The following uses "iterative" refinement (or at least something similar) to improve the result, but it cannot cope (well) with negative residuals. -->
<feComposite k4="0" k3="0" k2="0" id="feComposite79" k1="1" operator="arithmetic" result="hrgbminhpestimate" in2="hqminhp" in="coefs" />
<!-- (hrgb-hp)/(hq-hp)*(hq-hp) = (hrgb-hp) -->
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<!-- Computes (1/100)*(1/(hq-hp)) -->
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<!-- 100*(hrgb-hp)*(1/100)*(1/(hq-hp)) = (hrgb-hp)/(hq-hp) -->
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<!-- Reconstruct original alpha channel -->
<feColorMatrix id="feColorMatrix101" values="0 0 0 0 1 0 0 0 0 1 0 0 0 0 1 0 0 0 1 0" type="matrix" result="alpha" in="SourceGraphic" />
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<!-- Set up p, q and q-p -->
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<feComponentTransfer id="feComponentTransfer21" result="q2" in="q">
<!-- q without the red channel -->
<feFuncR id="feFuncR23" slope="0" type="linear" />
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<feBlend id="feBlend25" result="pq" in2="q2" in="p" mode="lighten" />
<!-- p in the red channel and q in the rest -->
<feColorMatrix id="feColorMatrix27" values="-1 1 0 0 0 -1 1 0 0 0 -1 1 0 0 0 0 0 0 0 1 " type="matrix" result="qminp" in="pq" />
<!-- Set up coefs -->
<!-- This is what determines the "target" hue. In the ideal case this would use feImage to get the image data from some other object and compute the hue from that. -->
<feFlood id="feFlood29" result="hk" flood-opacity="1" flood-color="rgb(80%,80%,80%)" />
<!-- This could also use an arbitrary image whose hue has been determined. -->
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<feFuncR id="feFuncR33" tableValues="1 1 0 0 0 1 1" type="table" />
<feFuncG id="feFuncG35" tableValues="0 1 1 1 0 0 0" type="table" />
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<!-- Combine p and q -->
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<feComposite k4="0" k1="0" id="feComposite41" k3="1" k2="1" operator="arithmetic" result="color" in2="qminpc" in="p" />
<!-- This has a slight chance of failing, as alpha gets larger than 1 internally, but it really shouldn't be a problem as the specification clearly says that it operates in premultiplied mode AND the results are clamped to [0,1]. -->
<!-- Reconstruct original alpha channel -->
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