This is a multi-part message in MIME format. --Multipart=_Sat__25_Sep_2004_23_16_51_+0200_/9cxi5iOeuy/GmRQ Content-Type: text/plain; charset=US-ASCII Content-Transfer-Encoding: 7bit
Dear Mitsuru, thank you for this fast reaction for my crying for help. ;-) Unfortunately your canon-scsi.c you've sent to me didn't gave any success. Same error as before in sane-backends-1.0.12 > Yes, would you send me the debug files of version 1.0.11 and 1.0.12 ? > And I do not have a canoscanFB1200S now, though when I had modified version > 1.0.11 for FB1200S, I could use it. > So, I would like to ask for the canoscanFB1200S user's test too. > Hopefully it helps you a little bit, when I attach some debug output (debug.tgz). I made different runs with the following debug settings. with sane-backends-1.0.12 (with your new canon.scsi.c) SANE_DEBUG_CANON=255 (debug-canon.log) SANE_DEBUG_SANEI_SCSI=255 (debug-scsi.log) strace scanimage -d canon:/dev/scanner (debug-strace.log) with sane-backends-1.0.11 (original) SANE_DEBUG_CANON=255 (debug-canon-1.0.11.log) SANE_DEBUG_SANEI_SCSI=255 (debug-scsi-1.0.11.log) strace scanimage -d canon:/dev/scanner (debug-strace-1.0.11.log) What output would also help? What information would also be helpfully? > So, Thomas, how trouble for 2700F the version 1.0.12 have ? > Would you give me more specific explanation about the trouble of version > 1.0.12 ? Problemdescription: Current situation: I've installed sane on my server and access over the network with xsane to the attached scanners (one usb-scanner, an agfa snapscan e20 and the canon 2700F scsi filmscanner). USB scanner works fine and also the canon scanner seems to work. Preview works fine, but "real" scanning fails with "invalid argument". starting scanimage from the command line on my my server gives me also "invalid argument" when I try to start a scan. This happens with sane-backend-1.0.12 and above. sane-backend-1.0.11 and 1.0.10 work fine (other versions untested). (Kernel 2.4.26, scsi interface tekram dc390, driver ncr53c8xx.o) > And Could you use Xsane0.91 with version 1.0.11 by 2700F ? Xsane 0.91? Why I should use xsane 0.91? In wich way It would be useful? I'using currently xsane 0.95 on my desktop. Thank you for your help. Please let me know If there is something I can do to help you. If you would live in the near I could send my scanner to you ;-) Best regards Thomas Loescher --Multipart=_Sat__25_Sep_2004_23_16_51_+0200_/9cxi5iOeuy/GmRQ Content-Type: application/x-compressed-tar; name="debug.tgz" Content-Disposition: attachment; filename="debug.tgz" Content-Transfer-Encoding: base64 H4sIAHbbVUEAA+w9aXfbOJL9dfMrsJ55z/Y8HwR4Sm+UHcWmHc3YkkeS0/Fz/LgUSdncSJTDI7G3 u/e3Lw4dJEVCEmSn7URKZEmoQqFQB6oAEqDr9ZLbw1+e9SVJiqSrKv6kr/wn/Q4liFRZVVUFl0NJ U7RfgPq8bLFXEsV2CMAv4WgU8/AWwV/py6X6p3/3HTsYBQeD0e0Tt4H1iRWqlOhfQZo81T+COsT4 siqjX4D0xHwUvn5y/V9HduD5FjWAG9Dx4tgPbgH9CQbeV28ARn1ADQPEI4BU9eDNNf15A96+BaSy 5Qd+PC2cllTp1/2e7Xz2AjcC8EA6gChd2Y5j27mzRoE3XzotYT+rYHTvBYQzbKpfDyMMDLxwDinC LRGkHazTwLVDdxc0mv++bLSv0i34wZfEDx+nRX//+1xRnmDX7HSty2aja7XN+nGGWuxFsZXgDluh Z7sZqmWgPPW22THbH0xAGkiTDr3IC796lESabmF5nuip2QWdo3oTnLeOTdAfhYBIDTijIA5HA/Lp +rE/CqIphVsvZjjDketVgTN0r5Wb2rb0AJXtdPMZvJniJyWg9xh719INqAFYKQNDApbKoIgLlblQ hUBlVAZWKV9KGVjj0ta5UIMLrXChUOKD+fKCfIFBvsSgwgerfDBfZJAvM8gXGuRLDVGpqWopnIpN 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