Vortex beams, endowed with orbital angular momentum (OAM), have captivated researchers for several decades. Pioneering work by Allen
Photonics Research, Volume. 13, Issue 5, 1148(2025)
Intelligent tailoring of a broadband orbital angular momentum comb towards efficient optical convolution Editors' Pick
Due to the high-dimensional characteristics of photon orbital angular momentum (OAM), a beam can carry multiple OAMs simultaneously thus forming an OAM comb, which has been proved to show significant potential in both classical and quantum photonics. Tailoring broadband OAM combs on demand in a fast and accurate manner is a crucial basis for their application in advanced scenarios. However, obtaining phase-only gratings for the generation of arbitrary desired OAM combs still poses challenges. In this paper, we propose a multi-scale fusion learning U-shaped neural network that encodes a phase-only hologram for tailoring broadband OAM combs on-demand. Proof-of-principle experiments demonstrate that our scheme achieves fast computational speed, high modulation precision, and high manipulation dimensionality, with a mode range of
1. INTRODUCTION
Vortex beams, endowed with orbital angular momentum (OAM), have captivated researchers for several decades. Pioneering work by Allen
Previous research has introduced various schemes for generating OAM modes, where a single element, such as spiral phase plate or spatial light modulator, typically provides only one OAM mode, limiting scalability [19–21]. As the number of multiplexed OAM modes increases, the cost and complexity will rapidly grow and with the resultant required multiple elements [22–24], it is highly desirable to generate a large number of OAM modes in a simple, scalable, and cost-efficient way, leading to a consensus on the need for a phase-only modulation of OAM combs’ on-demand tailoring [11,25,26]. Different from generating single-mode OAM beams directly, creating OAM combs solely through superposing spiral phases is not feasible due to the inevitable mode intensity loss in phase-only modulation [27]. Current schemes, such as mode iteration [27], genetic algorithms [28], pattern-search strategies [29], and adaptive modification [30], have been employed to address this challenge. However, these schemes still face troubles such as initial set dependency, long iteration time, and uncertain convergence.
Inspired by deep neural networks with powerful abilities in extracting high-dimensional features [31–33], there is significant potential to establish an intelligent, data-driven framework for optimizing phase designs [34–36]. In this paper, we propose a multi-scale fusion learning U-shaped neural network (MSUNet) for on-demand tailoring of broadband OAM combs within a phase-only hologram. Our approach extracts high-dimensional features from the target OAM comb and compensates for mode intensity loss through multi-scale learning at the latent feature space, aiming to generate a high-dimensional OAM hologram. Notably, there are no ground-truth holograms employed in the training; instead, the scalar diffraction is incorporated in network design to calculate the modulated optical field, enabling an analysis of the OAM spectrum, forming a loss constraint. By this means, the issue of lacking ground-truth in supervised training is addressed, thus enhancing the network interpretability. Proof-of-principle experiments demonstrate that our proposal significantly achieves faster computational speed, higher modulation precision, and higher manipulation dimensionality, with a mode range of
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2. CONCEPT OVERVIEW
Figure 1 presents a comprehensive conceptual framework for the intelligent tailoring of a broadband OAM comb and its application in optical convolution. This framework enables on-demand customization of OAM comb settings, including mode range, interval, and distribution, to form a target OAM spectrum. The corresponding target intensity and phase patterns of the target OAM comb serve as input data for the neural network training. The proposed MSUNet architecture consists of two main processes: feature extraction and feature fusion. In the feature extraction process, the input data patterns pass through a feature extractor, transforming into high-dimensional features, resulting in a feature map. Subsequently, feature fusion is performed using a multi-scale scheme. By weighting the high-dimensional intensity and phase features at multiple scales, the mode intensity loss caused by phase-only modulation can be compensated for, thereby refining the superposed hologram. Since there are no standard holograms available as ground-truth for training, we incorporate the physical process of scalar diffraction to calculate the optical field modulated by the output refined phase-only hologram, enabling an analysis of the OAM spectrum through a pre-trained deep residual network (DRN) [37]. The difference between this output OAM comb and the target is used as a constraint for back-propagation, addressing the lack of ground-truth in supervised training, enhancing the network interpretability, and achieving reliable network training.
Figure 1.Concept of intelligent tailoring of OAM comb. The on-demand customization of OAM comb settings includes mode range, interval, and distribution, forming a target OAM comb. The corresponding complex-amplitude patterns serve as input data for the neural network training. The overall workflow of the proposed intelligent tailoring scheme consists of a feature extraction structure and a feature fusion structure, enabling the generation of a phase-only hologram thus tailoring the target OAM comb. The difference between output and target OAM spectrum is used as a constraint for loss backward in network training. This proposal can also be employed to conduct optical convolution calculation. For any arbitrary OAM combs
Furthermore, such straightforward generation of OAM combs enables the application in optical convolution. The harmonic coefficients of the OAM comb, such as the OAM spectrum, can also be treated as discrete functions. Analogous to Fourier transformation, the vector convolution of any two discrete functions in the OAM domain is equivalent to the spectra of the product of their optical fields in the spatial domain. Therefore, the convolution of any two discrete functions [
3. MSUNet TOWARDS BROADBAND OAM COMB TAILORING
Figure 2(a) illustrates the feature extraction workflow, which mainly involves a feature extractor to transform the input target intensity and phase patterns into easily separable high-dimensional features at the latent feature space. Figure 2(b) details the structure of a U-shaped neural network [38], which serves as a feature extractor. This architecture consists of four sets of
Figure 2.Structure of MSUNet. (a) The feature extraction workflow. (b) The U-shaped neural network structure, which serves as the feature extractor for feature extraction process. (c) Details of the feature fusion process for generating phase-only hologram that incorporates angular spectrum transmission and a pre-trained DRN model to analyze the OAM spectrum for loss backward propagation. (d) The multi-scale scheme, which plays a crucial role in feature fusion for generating the phase-only hologram.
Figure 2(c) displays the fusion process of intensity and phase high-dimensional features. Through the weighted combination of different-sized convolutionally sampled feature maps at varying scales, the phase-only hologram that includes intensity information compensation can be obtained. Specifically, as illustrated in Fig. 2(d), the multi-scale scheme includes three
4. RESULTS AND DISCUSSION
A. Experiments of OAM Comb Intelligent Tailoring
Proof-of-principle experiments are carried out to evaluate the performance of the proposed MSUNet for on-demand broadband OAM comb tailoring and its applications in optical convolution. The experimental setup is sketched in Fig. 3(a). A 1617 nm Gaussian beam emitted from a distributed feedback laser diode passes a half-wave plate (HWP) and a polarized beam splitter (PBS) in sequence, so as to obtain horizontally linear polarization to match the demand of phase-only modulation of the spatial light modulator (SLM, Holoeye, PLUTO-TELCO-013-C). The phase-only hologram obtained from MSUNet is encoded onto the SLM to generate the target OAM comb. After passing through a plano-convex lens with focal length 200 mm, the diffraction field is collected by an infrared CCD camera for subsequent OAM spectrum analysis.
Figure 3.Experimental OAM comb intelligent tailoring. (a) The experimental setup. DFB, a 1617 nm distributed feedback laser diode; SMF, single-mode fiber; Col., collimator; HWP, half-wave plate; PBS, polarized beam splitter; SLM, liquid-crystal spatial light modulator; L, plano-convex lens with focal length 200 mm; CCD, infrared CCD camera. (b), (c) Phase-only holograms of broadband OAM combs with a minimum mode interval 1, and mode range of
Specifically, for tailoring OAM combs, we first input the target OAM comb intensity and phase patterns into the trained MSUNet on a computer to obtain the encoded phase-only hologram. This hologram is then encoded onto the SLM, and the intensity distribution of modulated optical fields can be observed at the CCD. For OAM spectrum measurement, due to the phase-only property, we can directly superpose the anti-spiral phase onto the hologram, resulting in a series of holograms with anti-spiral phases. By sequentially switching these holograms on the SLM, OAM spectrum measurement can be conducted (see more details in Appendix B). Similarly, for the efficient optical convolution, we can directly superpose the holograms from MSUNet for
Considering that broadband OAM combs involve a large number of superposed OAM modes, after normalization, the absolute values of the relative intensity for each mode are small. RMSE may appear low due to these inherently small amplitude values, while this does not affect its effectiveness in training and reflecting results. However, it may not be particularly intuitive when presenting results. Therefore, we introduced an additional metric to provide a more straightforward evaluation of performance, while still including RMSE.
Given that evaluating multiple-mode OAM beams through mode purity is not feasible, we introduced the concept of a density matrix, analogous to concepts in quantum optics, to assess the quality of the output OAM comb. An OAM comb
As an illustrative example, Fig. 3(b) shows the phase-only hologram and corresponding visualizations of the simulated and experimental optical field patterns for a 17-mode OAM comb with a minimum mode interval of one. Its OAM spectrum is measured and provided in Fig. 3(d), which displays the target OAM spectrum (blue bars) and the experimentally generated OAM spectrum (red bars). The corresponding density matrix difference is shown in Fig. 3(e). The MSUNet accurately tailors the OAM comb, achieving an RMSE of 0.0029 and a fidelity of 84.53%, within a testing time of 29 ms. Similarly, Fig. 3(c) presents the phase-only hologram and visualizations for a 36-mode OAM comb crossing mode range of
B. Optical Convolution
Since our proposal is available for tailoring broadband OAM combs that represent any discrete functions, we can further utilize OAM combs towards optical convolution calculation. Convolution is a fundamental mathematical operation widely used in signal and image processing. It produces a new function from two original functions, representing how a function is modified by the other. For OAM combs, similar to the product of functions in the spatial domain corresponding to the convolution of their Fourier coefficients, the OAM comb, with its rotational symmetry, can be expanded by Fourier transformation on azimuth into helical harmonics. In spherical coordinates, this expansion is represented by the superposition of multiple helical harmonic functions, forming the OAM spectrum [40]. Consequently, the optical fields product of OAM combs in the spatial domain corresponds to the convolution of the harmonic coefficients in the helical harmonic domain, where the OAM spectrum convolution is denoted as
As illustrated in Fig. 4(a), for arbitrary functions (OAM combs)
Figure 4.Highly efficient optical convolution employing OAM combs. (a) Overview of the OAM-comb-based optical convolution. (b) OAM comb
Proof-of-principle experiments confirm the practical operability, with example results shown in Figs. 4(b)–4(d). Figures 4(b) and 4(c) depict the original functions, OAM comb
5. CONCLUSION
This work presents an intelligent and efficient approach for on-demand tailoring of broadband OAM combs within a phase-only hologram, demonstrating in a highly efficient optical convolution. Our scheme overcomes the key limitations such as mode intensity loss in phase-only modulation of multiplexed OAM beams, enabling on-demand tailoring of further broadband combs with faster computational speed, higher modulation precision, and higher manipulation dimensionality. Proof-of-principle experiments, covering a variety of mode intervals and numbers of OAM modes ranging from
APPENDIX A: MSUNet TRAINING DETAILS
The training dataset for MSUNet consists of simulated data whose parameters are identical to the experiment, ranging from
APPENDIX B: OAM SPECTRUM ANALYSIS
The OAM spectra are analyzed through OAM back converting, where a series of spiral phases
Specifically, we first generate an OAM comb through the MSUNet output hologram. Because of the phase-only modulation, it can be superposed directly with spiral phases within the setting mode range, here from
Figure 5.Experimentally captured back-converted patterns for the generated OAM combs. The orders of the back-converting spiral phases are labeled at the top left corner of each inset. The orange dashed circle represents the sampling area, where intensities inside it are regarded as the back-converted OAM channel.
Figure 6.Results of the spectrum measurement before and after calibration. The target OAM comb, and the experimental OAM spectrum before and after refining by the calibration curve, are represented by blue, red, and green bars, respectively. The calibration curve, measured using a standard spiral phase pair, is shown in yellow.
APPENDIX C: EXTENDED EXPERIMENTAL RESULTS
Our proposal for intelligent tailoring of OAM combs supports the OAM comb settings with OAM mode ranging from
Figure 7.Extended experimental results of various OAM mode numbers. (a) 5 modes (RMSE = 0.0041, fidelity = 91.33%), (b) 10 modes (RMSE = 0.0033, fidelity = 93.44%), (c) 15 modes (RMSE = 0.0034, fidelity = 84.80%), (d) 20 modes (RMSE = 0.0025, fidelity = 84.43%), (e) 25 modes (RMSE = 0.0030, fidelity = 81.79%), (f) 30 modes (RMSE = 0.0038, fidelity = 81.60%), (g) 35 modes (RMSE = 0.0058, fidelity = 81.19%), and (h) 40 modes (RMSE = 0.0037, fidelity = 81.53%).
Figure 8.Variation of RMSE and fidelity with increasing number of modes in an OAM comb. The blue line represents the variation of RMSE with the increasing number of OAM modes, where a lower RMSE indicates better performance. The orange line illustrates the variation of fidelity with the increasing number of OAM modes, where higher fidelity reflects better accuracy.
APPENDIX D: DERIVATION OF OPTICAL CONVOLUTION FOR OAM COMBS
Consider two OAM combs in the spatial domain,
Due to the orthogonality of the helical harmonic functions, the product of two helical harmonic functions can be represented as a linear combination of other harmonics:
Substituting Eq. (
Equation (
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Shiyun Zhou, Lang Li, Yishu Wang, Liliang Gao, Zhichao Zhang, Chunqing Gao, Shiyao Fu, "Intelligent tailoring of a broadband orbital angular momentum comb towards efficient optical convolution," Photonics Res. 13, 1148 (2025)
Category: Holography, Gratings, and Diffraction
Received: Nov. 27, 2024
Accepted: Feb. 10, 2025
Published Online: Apr. 14, 2025
The Author Email: Shiyao Fu (fushiyao@bit.edu.cn)
CSTR:32188.14.PRJ.550470