End-to-end learning has become a popular method to optimize a constellation shape of a communication system. When the channel model is differentiable, end-to-end learning can be applied with conventional backpropagation algorithm for optimization of the shape. A variety of optimization algorithms have also been developed for end-to-end learning over a non-differentiable channel model. In this paper, we compare gradient-free optimization method based on the cubature Kalman filter, model-free optimization and backpropagation for end-to-end learning on a fiber-optic channel modeled by the split-step Fourier method. The results indicate that the gradient-free optimization algorithms provide a decent replacement to backpropagation in terms of pe...
Using end-to-end deep learning, we experimentally demonstrate the optimized design of geometric cons...
The increasing demand for higher data rates is driving the adoption of high-spectral-efficiency (SE)...
In this article, we experimentally demonstrate the combined benefit of artificial neural network-bas...
Vendor interoperability is one of the desired future characteristics of optical networks. This means...
GMI-based end-to-end learning is shown to be highly nonconvex. We apply gradient descent initialized...
This paper presents design methods for highly efficient optimisation of geometrically shaped conste...
The autoencoder concept for geometric constellation shaping is discussed. Applications in coherent o...
This paper presents design methods for highly efficient optimisation of geometrically shaped constel...
Fiber-optic auto-encoders are demonstrated on an intensity modulation/direct detection testbed, outp...
We perform geometric constellation shaping with optimized bit labeling using a binary autoencoder in...
We implement a new variant of the end-to-end learning approach for the performance improvement of an...
Fiber-optic auto-encoders are demonstrated on an intensity modulation/direct detection testbed, outp...
In this paper we carry out a joint optimization of probabilistic (PS) and geometric shaping (GS) for...
Using end-to-end deep learning, we experimentally demonstrate the optimized design of geometric cons...
The increasing demand for higher data rates is driving the adoption of high-spectral-efficiency (SE)...
In this article, we experimentally demonstrate the combined benefit of artificial neural network-bas...
Vendor interoperability is one of the desired future characteristics of optical networks. This means...
GMI-based end-to-end learning is shown to be highly nonconvex. We apply gradient descent initialized...
This paper presents design methods for highly efficient optimisation of geometrically shaped conste...
The autoencoder concept for geometric constellation shaping is discussed. Applications in coherent o...
This paper presents design methods for highly efficient optimisation of geometrically shaped constel...
Fiber-optic auto-encoders are demonstrated on an intensity modulation/direct detection testbed, outp...
We perform geometric constellation shaping with optimized bit labeling using a binary autoencoder in...
We implement a new variant of the end-to-end learning approach for the performance improvement of an...
Fiber-optic auto-encoders are demonstrated on an intensity modulation/direct detection testbed, outp...
In this paper we carry out a joint optimization of probabilistic (PS) and geometric shaping (GS) for...
Using end-to-end deep learning, we experimentally demonstrate the optimized design of geometric cons...
The increasing demand for higher data rates is driving the adoption of high-spectral-efficiency (SE)...
In this article, we experimentally demonstrate the combined benefit of artificial neural network-bas...