From mboxrd@z Thu Jan 1 00:00:00 1970 Path: news.gmane.org!.POSTED.blaine.gmane.org!not-for-mail From: Andy Moreton Newsgroups: gmane.emacs.devel Subject: Re: Testing native image scaling Date: Wed, 27 Mar 2019 18:35:09 +0000 Message-ID: References: <83fttpat8p.fsf@gnu.org> <20190119214543.GA13967@breton.holly.idiocy.org> <834la3b9hd.fsf@gnu.org> <838sx0kzw9.fsf@gnu.org> Mime-Version: 1.0 Content-Type: multipart/mixed; boundary="=-=-=" Injection-Info: blaine.gmane.org; posting-host="blaine.gmane.org:195.159.176.226"; logging-data="208646"; mail-complaints-to="usenet@blaine.gmane.org" User-Agent: Gnus/5.13 (Gnus v5.13) Emacs/27.0.50 (windows-nt) To: emacs-devel@gnu.org Original-X-From: emacs-devel-bounces+ged-emacs-devel=m.gmane.org@gnu.org Wed Mar 27 19:35:33 2019 Return-path: Envelope-to: ged-emacs-devel@m.gmane.org Original-Received: from lists.gnu.org ([209.51.188.17]) by blaine.gmane.org with esmtps (TLS1.0:RSA_AES_256_CBC_SHA1:256) (Exim 4.89) (envelope-from ) id 1h9DOf-000s8Y-7a for ged-emacs-devel@m.gmane.org; Wed, 27 Mar 2019 19:35:33 +0100 Original-Received: from localhost ([127.0.0.1]:52001 helo=lists.gnu.org) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1h9DOe-0007Bm-87 for ged-emacs-devel@m.gmane.org; Wed, 27 Mar 2019 14:35:32 -0400 Original-Received: from eggs.gnu.org ([209.51.188.92]:33152) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1h9DOU-0007BY-E5 for emacs-devel@gnu.org; Wed, 27 Mar 2019 14:35:23 -0400 Original-Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1h9DOT-0005Dq-Aa for emacs-devel@gnu.org; Wed, 27 Mar 2019 14:35:22 -0400 Original-Received: from [195.159.176.226] (port=41708 helo=blaine.gmane.org) by eggs.gnu.org with esmtps (TLS1.0:RSA_AES_256_CBC_SHA1:32) (Exim 4.71) (envelope-from ) id 1h9DOQ-0005Bk-8e for emacs-devel@gnu.org; Wed, 27 Mar 2019 14:35:19 -0400 Original-Received: from list by blaine.gmane.org with local (Exim 4.89) (envelope-from ) id 1h9DOO-000rjh-7K for emacs-devel@gnu.org; Wed, 27 Mar 2019 19:35:16 +0100 X-Injected-Via-Gmane: http://gmane.org/ Cancel-Lock: sha1:019XfpaEH5VjxgaS2P7b+++ghNw= X-detected-operating-system: by eggs.gnu.org: GNU/Linux 2.2.x-3.x [generic] X-Received-From: 195.159.176.226 X-BeenThere: emacs-devel@gnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: "Emacs development discussions." List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , Errors-To: emacs-devel-bounces+ged-emacs-devel=m.gmane.org@gnu.org Original-Sender: "Emacs-devel" Xref: news.gmane.org gmane.emacs.devel:234787 Archived-At: --=-=-= Content-Type: text/plain On Wed 27 Mar 2019, Eli Zaretskii wrote: >> Date: Wed, 27 Mar 2019 11:35:26 +0900 >> From: YAMAMOTO Mitsuharu >> Cc: Alan Third , >> emacs-devel@gnu.org >> >> (insert-sliced-image (create-image "splash.png" nil nil :scale 0.5) nil nil 3 5) >> >> Actually, I suspect this does not work on W32 because the comparison >> with the original image size is made for s->slice.width (or height) >> rather than s->img->width (or height) as I just did for cairo code. >> Could you check it on W32? > > It seems to work, but maybe I don't know what and how to check. Can > you show what I should expect to see with and without the :scale > attribute, in "emacs -Q"? > > Thanks. I would expect a sliced image to be composed of a grid of tiled images instead of a single image, but to have the same visual appearance as the original image. 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AndyM --=-=-=--