In virtual reality, holograms can present scenes and objects with 3D effects to give users a sense of real presence. The 3D CGH technology based on deep learning has many application prospects, including virtual reality, augmented reality, medical imaging, and other fields. These factors will affect the viewing effect and clarity of the final generated hologram. During the display process, attention needs to be paid to the position of the light source and the intensity of the light, as well as the setting and calibration of the projection equipment. In the process of hologram display, a light source and specific projection equipment, such as a holographic projector, need to be used. These factors will affect the visual effect and fidelity of the final generated hologram.įinally, the generated hologram needs to be displayed. During the hologram generation process, we need to pay attention to the light source settings and the hologram adjustment. In this process, the 3D model needs to be input into the deep learning model, and then the output result is rendered into a hologram. During the model training process, a large amount of data needs to be used to improve the model's accuracy and stability.Īfter the deep learning model is trained, the next step is to generate holograms. In this process, Convolutional Neural Network (CNN) can be used. Deep learning models are the essential technique to convert 3D models into holograms. These factors will affect the quality and effect of the final generated hologram.Īfter preparing the data of 3D objects and constructing the model, the next step is to train the deep learning model. During the model-building process, attention must be paid to the model geometry and texture mapping details. In this process, 3D modeling software needs to be used. Model construction is the crucial step in converting 3D objects into holograms. The higher the accuracy of the data, the more precise the hologram will be, and the higher the resolution, the more details can be presented.Īfter preparing the data of the 3D object, the model needs to be constructed next. In this process, it is necessary to pay attention to the precision and resolution of the data. Usually, the data of 3D objects can be obtained by using 3D scanners or manual modeling. To generate holograms, we need to prepare the data of 3D objects first. This technology covers data preparation, model construction, deep learning model training, hologram generation, and presentation. WiMi uses deep learning algorithms to analyze 3D models to extract depth information and then undergoes a series of optical processing to turn the depth map into a hologram. It also allows the optimization of light field information, thereby improving the quality and resolution of holograms. Deep learning can train neural networks, thus enabling automated object recognition and 3D modeling. (NASDAQ: WIMI) ("WiMi" or the "Company"), a leading global Hologram Augmented Reality ("AR") Technology provider, today announced the development of the 3D CGH technology based on deep learning. BEIJING, J/PRNewswire/ - WiMi Hologram Cloud Inc.
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