From mboxrd@z Thu Jan 1 00:00:00 1970 X-Msuck: nntp://news.gmane.io/gmane.comp.tex.context/101570 Path: news.gmane.org!.POSTED!not-for-mail From: dxpublica@posteo.net Newsgroups: gmane.comp.tex.context Subject: \definetextbackground does not fill tables within Date: Mon, 13 Aug 2018 21:37:45 +0000 Message-ID: Reply-To: dxpublica@posteo.net, mailing list for ConTeXt users NNTP-Posting-Host: blaine.gmane.org Mime-Version: 1.0 Content-Type: multipart/mixed; boundary="=_893e3cd037eb0a6db233817fe141240e" X-Trace: blaine.gmane.org 1534196179 15927 195.159.176.226 (13 Aug 2018 21:36:19 GMT) X-Complaints-To: usenet@blaine.gmane.org NNTP-Posting-Date: Mon, 13 Aug 2018 21:36:19 +0000 (UTC) User-Agent: Posteo Webmail To: ntg-context@ntg.nl Original-X-From: ntg-context-bounces@ntg.nl Mon Aug 13 23:36:15 2018 Return-path: Envelope-to: gctc-ntg-context-518@m.gmane.org Original-Received: from zapf.boekplan.nl ([5.39.185.232] helo=zapf.ntg.nl) by blaine.gmane.org with esmtp (Exim 4.84_2) (envelope-from ) id 1fpKVa-00043o-Oo for gctc-ntg-context-518@m.gmane.org; Mon, 13 Aug 2018 23:36:14 +0200 Original-Received: from localhost (localhost [127.0.0.1]) by zapf.ntg.nl (Postfix) with ESMTP id 903CF50574; Mon, 13 Aug 2018 23:38:00 +0200 (CEST) X-Virus-Scanned: Debian amavisd-new at zapf.boekplan.nl Original-Received: from zapf.ntg.nl ([127.0.0.1]) by localhost (zapf.ntg.nl [127.0.0.1]) (amavisd-new, port 10024) with ESMTP id 1Xn1j9-_okMc; Mon, 13 Aug 2018 23:37:58 +0200 (CEST) Original-Received: from zapf.ntg.nl (localhost [127.0.0.1]) by zapf.ntg.nl (Postfix) with ESMTP id 4C0525056A; Mon, 13 Aug 2018 23:37:58 +0200 (CEST) Original-Received: from localhost (localhost [127.0.0.1]) by zapf.ntg.nl (Postfix) with ESMTP id 63A3F5056A for ; Mon, 13 Aug 2018 23:37:57 +0200 (CEST) X-Virus-Scanned: Debian amavisd-new at zapf.boekplan.nl Original-Received: from zapf.ntg.nl ([127.0.0.1]) by localhost (zapf.ntg.nl [127.0.0.1]) (amavisd-new, port 10024) with ESMTP id YOEPAtKXwhOC for ; Mon, 13 Aug 2018 23:37:56 +0200 (CEST) Original-Received: from mout02.posteo.de (mout02.posteo.de [185.67.36.66]) (using TLSv1.2 with cipher ECDHE-RSA-AES256-GCM-SHA384 (256/256 bits)) (No client certificate requested) by zapf.ntg.nl (Postfix) with ESMTPS id 9927B50569 for ; Mon, 13 Aug 2018 23:37:46 +0200 (CEST) Original-Received: from submission (posteo.de [89.146.220.130]) by mout02.posteo.de (Postfix) with ESMTPS id 1D9D621166 for ; Mon, 13 Aug 2018 23:37:46 +0200 (CEST) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/simple; d=posteo.net; s=2017; t=1534196266; bh=foYAmO/eBCvA9Xnxg+3pJ7jjofqfeeyppEMvObItaBU=; h=Date:From:To:Subject:From; b=pVTkuGEpqnu7VQqO5hTZ9oN5WN2V4wfw78jjpUtbkcDeXPCypG0DhxuGIM78WMlxN HkEgVwDtKGN+6gl2NkJwTBtEgFfFmN16PimtApOQU5g0zlh8XtszX9Vo5mVgGdA80U xls+Fkwk6DViwnLhidJuRCDfc5eLw4Rwf0LpSpwZqJpTlS25DiAhm3RobXedVjD51s cYD/GUgHYxrp3wlss7FzW5WhEH3eTwg5NH3UN61GdaCZpFfvKx6LVuEm8Y0DOJl9iW mi1x4Rm5+hAbHHN1k/oy9SaglGz7D31bE5L89DsH6AyFPGCbCtV2b6pOET1LT8fWwv ujhRGe6RoPEmg== Original-Received: from customer (localhost [127.0.0.1]) by submission (posteo.de) with ESMTPSA id 41q8GK4Ww8z9rxQ for ; Mon, 13 Aug 2018 23:37:45 +0200 (CEST) Mail-Reply-To: dxpublica@posteo.net X-Sender: dxpublica@posteo.net X-BeenThere: ntg-context@ntg.nl X-Mailman-Version: 2.1.16 Precedence: list List-Id: mailing list for ConTeXt users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , Errors-To: ntg-context-bounces@ntg.nl Original-Sender: "ntg-context" Xref: news.gmane.org gmane.comp.tex.context:101570 Archived-At: --=_893e3cd037eb0a6db233817fe141240e Content-Transfer-Encoding: quoted-printable Content-Type: text/plain; charset=UTF-8; format=flowed Hi, I have simple document which I define my \definetextbackground:=20 \startteoria and \stopteoria (see below). When I use it and put table=20 within, the table does not get filled with color. Any solution? Thanks in advance, Xavier \definecolor[teoriacolor][lightgray] \definetextbackground[bteoria][ frame=3Doff, location=3Dparagraph, background=3Dcolor, backgroundcolor=3Dteoriacolor, % fins aqu=C3=AD provat:=20 http://www.mail-archive.com/ntg-context%40ntg.nl/msg78014.html %width=3Dbroad, %corner=3Dround, %radius=3D5ex, leftoffset=3D10pt,rightoffset=3D10pt, topoffset=3D10pt,bottomoffset=3D10pt %offset=3D-5pt ] \definestartstop[teoria][before=3D{\begingroup\blank[big]\testpage[2]\start= textbackground[bteoria]},after=3D{\stoptextbackground\blank[big]\endgroup}] \starttext \startteoria \input tufte \placetable[force,none][taula:teoria:1]{Recopilaci=C3=B3 de dades. Concepte= s=20 fonamentals}{ \starttable[|l|p(.6\textwidth)|] \NC Poblaci=C3=B3: \NC S=C3=B3n {\em tots} els elements que s=C3=B3n object= e d'estudi=20 \NC \FR \HL \NC Mostra: \NC La {\em part} de la poblaci=C3=B3 de la qual recopilem les= =20 dades i estudiam. Poques vegades coincideix amb la poblaci=C3=B3. Una bona mostra necessita s= er=20 suficientment heterog=C3=A8nia per a poder representar la poblaci=C3=B3. Es pot determinar el tamany m=C3=ADnim necessari per a qu=C3=A8 una mostra = tengui=20 la representativitat necess=C3=A0ria amb un marge d'error. \NC \MR \HL \NC Grand=C3=A0ria: \NC {\em Nombre} d'elements de la poblaci=C3=B3 o de la= =20 mostra. \NC \MR \HL \NC Variable estad=C3=ADstica: \NC Cadascuna de les {\em propietats} o=20 caracter=C3=ADstiques que volem estudiar d'un conjunt de dades. \NC \LR \stoptable} Existeixen dues branques de l'estad=C3=ADstica: \startitemize \item L'{\em estad=C3=ADstica descriptiva}, que simplement descriu i=20 interpreta les caracter=C3=ADstiques del grup d'estudi, tal com =C3=A9s. Fa= un=20 {\em retrat} de la poblaci=C3=B3. \item L'{\em estad=C3=ADstica inferencial} que intenta fer prediccions i=20 justificar que la mostra s'adeq=C3=BCa a la poblaci=C3=B3, de manera que le= s=20 caracter=C3=ADstiques de la mostra siguin les mateixes que les=20 caracter=C3=ADstiques de la poblaci=C3=B3. \stopitemize \stopteoria \stoptext Result (see pdf file) --=_893e3cd037eb0a6db233817fe141240e Content-Transfer-Encoding: base64 Content-Type: application/pdf; name=prova.pdf Content-Disposition: attachment; filename=prova.pdf; size=16984 JVBERi0xLjcKJdDUxdgKOSAwIG9iago8PC9MZW5ndGggMjc0MiAgICAgIC9GaWx0ZXIvRmxhdGVE ZWNvZGU+PgpzdHJlYW0KeF61WkuPJLcNvvevqEuOU9ZbpSAYYNf2GDCQg5G5GT4kfqxt7Bi2c8jf D0nxo1RdXT3rbIzF7HRXSRTf5EeNW94tbvni4vT32+fLJ09+8X5tOfuyLc8/LJ5WOPo/bG7Nsbiy 1OLWkmoLy/PL8vXfnMvh8ZvnLy+fP1+wuLp1K5UItdXlrcbl25fLX5aXX/+9vPv9n7/++NO3i//r 8q/v3/30y+U3O532ZOFEfn9x8W75O1H8mRbkFtfqSgpua9vyckkhr775llx029Xb91dvU85rzrnl 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