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Meyer, M., Weber, S., Beutel, J., & Thiele, L. (2019). Systematic identification of external influences in multi-year microseismic recordings using convolutional neural networks. Earth Surface Dynamics, 7(1), 171–190. https://doi.org/https://doi.org/10.5194/esurf-7-171-2019
Meyer, M., Farei-Campagna, T., Pasztor, A., Da Forno, R., Gsell, T., Faillettaz, J., Vieli, A., Weber, S., Beutel, J., & Thiele, L. (2018). Event-triggered Natural Hazard Monitoring with Convolutional Neural Networks on the Edge. ArXiv:1810.09409 [Cs, Stat]. http://arxiv.org/abs/1810.09409
Hillerkuss, D., Schmogrow, R., Meyer, M., Wolf, S., Jordan, M., Kleinow, P., Lindenmann, N., Schindler, P. C., Melikyan, A., & Yang, X. (2012). Single-laser 32.5 Tbit/s Nyquist WDM transmission. Journal of Optical Communications and Networking, 4(10), 715–723.
Schmogrow, R., Meyer, M., Wolf, S., Nebendahl, B., Hillerkuss, D., Baeuerle, B., Dreschmann, M., Meyer, J., Huebner, M., & Becker, J. (2012). 150 Gbit/s real-time Nyquist pulse transmission over 150 km SSMF enhanced by DSP with dynamic precision. Optical Fiber Communication Conference and Exposition (OFC/NFOEC), 2012 and the National Fiber Optic Engineers Conference, 1–3.
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Meyer, M., Beutel, J., & Thiele, L. (2017, December 11). Unsupervised Feature Learning for Audio Analysis. Workshop Track - ICLR 2017. 5th International Conference on Learning Representations (ICLR), Toulon, France. http://arxiv.org/abs/1712.03835
Meyer, M., Farei-Campagna, T., Pasztor, A., Da Forno, R., Gsell, T., Weber, S., Failletaz, J., Vieli, A., Beutel, J., & Thiele, L. (2019). Event-triggered Geophone Platform for Co-Detection of Seismic Events. Geophysical Research Abstracts, 21, EGU2019-16940. https://doi.org/10.3929/ethz-b-000340844
Meyer, M., Weber, S., & Beutel, J. (2017). Data Exploration using Unsupervised Feature Extraction for Mixed Micro-Seismic Signals. Geophysical Research Abstracts, 19, EGU2017-16980. https://doi.org/10.3929/ethz-b-000161404
Meyer, M., Farei-Campagna, T., Pasztor, A., Da Forno, R., Beutel, T., & Thiele, L. (2019). Demo Abstract: How Many Climb the Matterhorn? 2019 18th ACM/IEEE International Conference on Information Processing in Sensor Networks (IPSN), 250–251.
Weber, S., Beutel, J., Forno, R. D., Geiger, A., Gruber, S., Gsell, T., Hasler, A., Keller, M., Lim, R., Limpach, P., Meyer, M., Talzi, I., Thiele, L., Tschudin, C., Vieli, A., Vonder Mühll, D., & Yücel, M. (2019). A decade of detailed observations (2008–2018) in steep bedrock permafrost at the Matterhorn Hörnligrat (Zermatt, CH). Earth System Science Data, 11(3), 1203–1237. https://doi.org/https://doi.org/10.5194/essd-11-1203-2019
Meyer, M., Weber, S., Beutel, J., & Thiele, L. (2019). Systematic identification of external influences in multi-year microseismic recordings using convolutional neural networks. Earth Surface Dynamics, 7(1), 171–190. https://doi.org/https://doi.org/10.5194/esurf-7-171-2019
Meyer, M., Farei-Campagna, T., Pasztor, A., Da Forno, R., Gsell, T., Faillettaz, J., Vieli, A., Weber, S., Beutel, J., & Thiele, L. (2018). Event-triggered Natural Hazard Monitoring with Convolutional Neural Networks on the Edge. ArXiv:1810.09409 [Cs, Stat]. http://arxiv.org/abs/1810.09409
Weber, S., Faillettaz, J., Meyer, M., Beutel, J., & Vieli, A. (2018). Acoustic and Microseismic Characterization in Steep Bedrock Permafrost on Matterhorn (CH). Journal of Geophysical Research: Earth Surface, 123(6), 1363–1385. https://doi.org/10.1029/2018JF004615
Miedl, P., He, X., Meyer, M., Bartolini, D. B., & Thiele, L. (2018). Frequency Scaling As a Security Threat on Multicore Systems. IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems, 37(11), 2497–2508. https://doi.org/10.1109/TCAD.2018.2857038
Meyer, M., Cavigelli, L., & Thiele, L. (2017). Efficient Convolutional Neural Network For Audio Event Detection. ArXiv:1709.09888 [Cs]. http://arxiv.org/abs/1709.09888
Hillerkuss, D., Schmogrow, R., Meyer, M., Wolf, S., Jordan, M., Kleinow, P., Lindenmann, N., Schindler, P. C., Melikyan, A., & Yang, X. (2012). Single-laser 32.5 Tbit/s Nyquist WDM transmission. Journal of Optical Communications and Networking, 4(10), 715–723.
Schmogrow, R., Meyer, M., Wolf, S., Nebendahl, B., Hillerkuss, D., Baeuerle, B., Dreschmann, M., Meyer, J., Huebner, M., & Becker, J. (2012). 150 Gbit/s real-time Nyquist pulse transmission over 150 km SSMF enhanced by DSP with dynamic precision. Optical Fiber Communication Conference and Exposition (OFC/NFOEC), 2012 and the National Fiber Optic Engineers Conference, 1–3.
Schmogrow, R., Winter, M., Meyer, M., Hillerkuss, D., Wolf, S., Baeuerle, B., Ludwig, A., Nebendahl, B., Ben-Ezra, S., & Meyer, J. (2012). Real-time Nyquist pulse generation beyond 100 Gbit/s and its relation to OFDM. Optics Express, 20(1), 317–337.
Schmogrow, R. M., Meyer, M., Schindler, P. C., Josten, A., Ben-Ezra, S., Koos, C., Freude, W., & Leuthold, J. (2013). 252 Gbit/s real-time Nyquist pulse generation by reducing the oversampling factor to 1.33. Optical Fiber Communication Conference, OTu2I-1.
Schmogrow, R., Bouziane, R., Meyer, M., Milder, P. A., Schindler, P. C., Bayvel, P., Killey, R. I., Freude, W., & Leuthold, J. (2012). Real-time digital Nyquist-WDM and OFDM signal generation: Spectral efficiency versus DSP complexity. Optical Communications (ECOC), 2012 38th European Conference and Exhibition On, 1–3.
Schmogrow, R., Winter, M., Meyer, M., Hillerkuss, D., Nebendahl, B., Meyer, J., Dreschmann, M., Huebner, M., Becker, J., & Koos, C. (2011). Real-time Nyquist pulse modulation transmitter generating rectangular shaped spectra of 112 Gbit/s 16QAM signals. Signal Processing in Photonic Communications, SPMA5.