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  1. Results that match 1 of 2 words

  2. ICASSP2014b.dvi

    mi.eng.cam.ac.uk/~mjfg/yoshioka_ICASSP14.pdf
    3 Apr 2014: Workshop. Automat. SpeechRecognition, Understanding, 2011, pp. 24–29. [13] O. Abdel-Hamid and H. ... Mag.,vol. 29, no. 6, pp. 114–126, 2012. [24] T. Yoshioka, X.
  3. Knill_IS14_1.dvi

    mi.eng.cam.ac.uk/~ar527/knill_is2014a.pdf
    10 Nov 2014: ware. Speaker adaptive training (SAT) using CMLLR [24] is. applied in training and test, with MLLR also used for decoding. ... Makhoul, “Acompact model for speaker adaptive training,” in Proc. ICSLP,1996. [24] M.
  4. Overview - 2007

    mi.eng.cam.ac.uk/~cipolla/archive/Presentations/2007-Cipolla-Vision.pdf
    19 May 2014: 1) (2) (3) (4). (9)(8)(7)(6). (5). (24). Learned contour and texture.
  5. slides.dvi

    mi.eng.cam.ac.uk/~mjfg/Bilbao14/talk.pdf
    25 Jun 2014: Cambridge University. Engineering DepartmenteNTERFACE June 2014 24. Controllable and Adaptable Statistical Parametric Speech Synthesis Systems. ... Integrated Expressive Speech Training [24]. Training. Expressive State. Prediction. ExtractionAcoustic
  6. Combining Tandem and Hybrid Systems for Improved Speech…

    mi.eng.cam.ac.uk/~ar527/rath_is2014a.pdf
    10 Nov 2014: A speaker adaptive training (SAT) system using global con-strained maximum likelihood linear regression (CMLLR) ata speaker level [24] was then constructed, followed by bothMinimum Phone Error (MPE) [25] and ... 7, no. 3, pp. 272–281, May 1999. [24] M.
  7. 28 Apr 2014: Instead, previous research has beenfocused on using N-best list rescoring for RNNLM performanceevaluation [13, 14, 26, 27, 24]. ... 21, no. 3, pp. 492–518,2007. [24] Y. Si, Q. Zhang, T.
  8. Combining Tandem and Hybrid Systems for Improved Speech…

    mi.eng.cam.ac.uk/~mjfg/interspeech14-rath.pdf
    23 Jun 2014: A speaker adaptive training (SAT) system using global con-strained maximum likelihood linear regression (CMLLR) ata speaker level [24] was then constructed, followed by bothMinimum Phone Error (MPE) [25] and ... 7, no. 3, pp. 272–281, May 1999. [24] M.
  9. unsup.eps

    mi.eng.cam.ac.uk/~ar527/ragni_is2014a.pdf
    20 Jun 2014: Thusmany of the waveform production issues [23] are not rele-vant. Furthermore, these schemes permit model-based adap-tation/compensation approaches [24] to be used for synthesis-ing data with target ... 51, pp. 1039–1064, 2009. [24] M. J. F. Gales,
  10. Knill_IS14_final.dvi

    mi.eng.cam.ac.uk/~mjfg/interspeech14-knill.pdf
    23 Jun 2014: domised at the frame level across all the languages [24, 5]. ... 29, no. 6, pp. 82–97, Nov 2012. [24] J.-T. Huang et al., “Cross-language knowledge transfer using mul-tilingual deep neural network with shared hidden layers,” in Proc.ICASSP,
  11. unsup.eps

    mi.eng.cam.ac.uk/~mjfg/interspeech14-ragni.pdf
    23 Jun 2014: Thusmany of the waveform production issues [23] are not rele-vant. Furthermore, these schemes permit model-based adap-tation/compensation approaches [24] to be used for synthesis-ing data with target ... 51, pp. 1039–1064, 2009. [24] M. J. F. Gales,
  12. Cambridge University Engineering Department_ News item

    mi.eng.cam.ac.uk/~cipolla/archive/Public-Understanding/2005-CUED-Tracking-Crowds.pdf
    7 Nov 2014: Detecting and tracking individual people in a crowd. 24 August 2005.
  13. 6 Jun 2014: This is effectively anunsupervised acoustic model training process [24, 25]. For all experiments the core ASR toolkit, used for acousticfeature generation, clustering, decoding and GMM-based acousticmodel training, was an extended ... 7319–7323, IEEE,
  14. 10 Nov 2014: This is effectively anunsupervised acoustic model training process [24, 25]. For all experiments the core ASR toolkit, used for acousticfeature generation, clustering, decoding and GMM-based acousticmodel training, was an extended ... 7319–7323, IEEE,
  15. D:/docs/reports/tech_17/tech_17.dvi

    mi.eng.cam.ac.uk/reports/svr-ftp/treece_tr691.pdf
    4 Aug 2014: 0.3 t < 1.0 1.06 0.37 2.35 1.46 0.58 1.07 0.24 0.14 0.15 0.23 0.04 0.31. ... 0.3 t < 1.0 2 31 24 60 2 35 3 30 3 30 3 30.
  16. The EarthThe faults that move duringearthquakes do not always ...

    mi.eng.cam.ac.uk/~cipolla/archive/Public-Understanding/2007-CAM-vision.pdf
    7 Nov 2014: OM. Y. CAMBRIDGE FUTURE. 24. AtomsWe can now distinguish singleatoms in some materials, formingimages at around 100 milliontimes magnification using power-ful electron microscopes.
  17. With Zappar, Augmented Reality Is Ready for Prime Time | TIME.com

    mi.eng.cam.ac.uk/~cipolla/archive/Public-Understanding/2012-TIME-Zappar.pdf
    7 Nov 2014: Video: Ninja cat - beware if this light-footed kitty isaround (London 24).
  18. BBC NEWS | England | Cambridgeshire | Mobiles to become the new…

    mi.eng.cam.ac.uk/~cipolla/archive/Public-Understanding/2004-BBC-News-mobile-phone-localisation.pdf
    7 Nov 2014: BBC News 24. News services Your news when youwant it. News Front Page.
  19. Do the maths - Times Online

    mi.eng.cam.ac.uk/~cipolla/archive/Public-Understanding/2009-Sunday-Times-Maths.pdf
    7 Nov 2014: He. Secondary schoolsComplete rankings: GCSEand A-level results. 24/08/2009 16:45Do the maths - Times Online. ... At Langley, Professor Cipolla had asked the class of 24 howmany wanted to be scientists after university.
  20. Noname manuscript No.(will be inserted by the editor) Using ...

    mi.eng.cam.ac.uk/~cipolla/publications/inproceedings/2013-Anderson-IJCV.pdf
    19 May 2014: There exists a large body of work. on this problem [8–10, 14, 16, 20, 24, 32], the majority of. ... Interna-tional Conference on Image Processing 1, 481–484 (2000). 24. Marsland, S., Twining, C., Taylor, C.: Groupwise non-rigid registration using
  21. Noname manuscript No.(will be inserted by the editor) Using ...

    mi.eng.cam.ac.uk/~cipolla/publications/article/2013-IJCV-dense-AAM.pdf
    19 May 2014: registration over a variety of different object classes [7,. 24, 25]. ... MICCAI 2879, 771–779 (2003). 24. Matthews, I., Baker, S.: Active appearance models revis-ited.
  22. 2 Apr 2014: 2.3.1 Unit selection. 22. 2.3.2 Composite HMMs. 24. 2.4 Phonetic decision trees. ... 23. 2.5 Composite HMM. 24. 2.6 Phonetic decision tree. 25. 2.7 Tree-intersect model.
  23. Noname manuscript No.(will be inserted by the editor) Using ...

    mi.eng.cam.ac.uk/~cipolla/archive/Publications/inproceedings/2013-Anderson-IJCV.pdf
    19 May 2014: There exists a large body of work. on this problem [8–10, 14, 16, 20, 24, 32], the majority of. ... Interna-tional Conference on Image Processing 1, 481–484 (2000). 24. Marsland, S., Twining, C., Taylor, C.: Groupwise non-rigid registration using
  24. Noname manuscript No.(will be inserted by the editor) Using ...

    mi.eng.cam.ac.uk/~cipolla/archive/Publications/article/2013-IJCV-dense-AAM.pdf
    19 May 2014: registration over a variety of different object classes [7,. 24, 25]. ... MICCAI 2879, 771–779 (2003). 24. Matthews, I., Baker, S.: Active appearance models revis-ited.
  25. newsletter.indd

    mi.eng.cam.ac.uk/~cipolla/archive/Public-Understanding/2005-Insight-Tracking-Crowds.pdf
    7 Nov 2014: Forthcoming courses:4-7 October Research Contracts22-25 November Business Development (new)9 December Market Research Masterclass (new)22-24 February 2006 Fundamentals of Tech. ... Transfer21-24 March 2006 Advanced Licensing Skills25-28 April 2006

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