Tuesday, December 24, 2024

WiMi Developed Deep Learning-based Holographic Reconstruction Network

Hologram AR provider, WiMi, has developed the holographic reconstruction network (HRNet), a breakthrough in hologram reconstruction. HRNet utilizes deep learning and holographic image processing to achieve noise-free reconstruction and phase imaging. The technology can handle multi-cross-section objects, allowing for full-focus images and depth maps. WiMi aims to integrate HRNet with other technologies such as AI and machine learning to enhance hologram reconstruction capabilities. The company believes holography has the potential to bring accurate data and information to various industries and promote innovation and development.

BEIJING, Oct. 11, 2023 /PRNewswire/ — WiMi Hologram Cloud Inc. (NASDAQ: WIMI) ("WiMi" or the "Company"), a leading global Hologram Augmented Reality ("AR") Technology provider, today announced that it developed the holographic reconstruction network (HRNet) which has brought an important technological breakthrough in the field of hologram reconstruction. Holography has always played an important role in scientific research, medical imaging, industrial inspection and other fields. However, traditional hologram reconstruction methods face many challenges, such as the need for a priori knowledge, manual operation and complex post-processing steps. To address these problems, WiMi’s innovative technology, HRNet, which is based on deep learning and holographic image processing, has end-to-end hologram reconstruction capabilities without the need for a priori knowledge and complex post-processing steps. The technology breaks through the limitations of traditional holographic reconstruction methods, realizing noise-free image reconstruction and phase imaging, which brings great potential to image processing, computer vision and other related fields.

Holography is a technique that records the complete wavefront information of an object, including amplitude and phase. Conventional holographic reconstruction methods usually require a priori knowledge, such as object distance, angle of incidence, and wavelength, and require additional filtering operations to remove unwanted image information. In addition, phase imaging and processing of multi-section objects place higher demands on conventional methods. However, WiMi’s HRNet overcomes these challenges by employing an end-to-end learning strategy with deep learning, bringing an innovative solution to holographic reconstruction.

WiMi’s HRNet employs a deep learning approach to address some of the challenges faced by traditional methods. Some of the key aspects of the technology are described below:

End-to-end learning: HRNet uses an end-to-end learning strategy to learn and reconstruct directly from the original holograms. This means that the original hologram serves as input to the network without any prior knowledge or additional preprocessing steps.

Deep residual networks: The network architecture employs deep residual learning. This means adding identity mappings between network layers to simplify the training process and speed up computation. This approach helps to solve the problem of vanishing/exploding gradients in deep neural networks.

Noise-free reconstruction: HRNet is able to output noise-free reconstruction results, which means it can eliminate the problems caused by noise and distortion in traditional methods. This noise-free reconstruction helps to improve the quality and accuracy of reconstructed images.

Phase imaging processing: HRNet can handle not only the reconstruction of amplitude objects, but also phase imaging. Conventional phase imaging requires compensation for phase aberration and additional unfolding steps to recover the true object thickness. HRNet is able to reconstruct phase information directly from holograms by learning the processing steps of phase imaging.

Multi-cross-section object processing: HRNet can also handle the reconstruction of multi-cross-section objects, extending the application’s degrees of freedom. This means that it is capable of generating full-focus images and depth maps, meeting the need for multi-dimensional data in many applications.

WiMi’s HRNet utilizes a deep learning and end-to-end learning approach to achieve noise-free image reconstruction by learning an internal representation of the holographic reconstruction that handles the needs of both phase imaging and multi-section objects. This data-driven approach eliminates the reliance on a priori knowledge and additional processing steps, providing a new and effective framework for digital holographic reconstruction.

The core of WiMi’s HRNet is to utilize the power of deep learning to reconstruct holograms without the need for any a priori knowledge or tedious pre-processing steps. This means that the original hologram serves as the input to the network, which automatically learns the necessary processing steps in holographic reconstruction and establishes pixel-level connections between the original hologram and backpropagation. This data-driven approach eliminates the reliance on a priori knowledge and additional processing steps, making the reconstruction process more efficient and accurate.

In HRNet, WiMi’s research team used a deep residual learning approach to design the network architecture. This approach adds identity mapping between network layers, simplifying the training process and speeding up computation. This moderately deep network architecture is able to have sufficient fitting capability while avoiding excessive computational load, achieving a delicate balance between performance and training load. HRNet is able to output noise-free reconstruction results, which improves the quality and accuracy of the reconstructed images. This is important for many applications, especially for fields such as medical imaging, industrial inspection, and scientific research where high quality images are required. Noise and distortion are often one of the main reasons for the degradation of reconstructed image quality in traditional methods, while HRNet is able to eliminate these problems and provide noise-free reconstruction results through a deep learning approach.

In addition to handling reconstruction of amplitude objects, WiMi’s HRNet has the ability to handle phase imaging and multi-section objects, thus further extending the freedom of application. While traditional phase imaging methods require compensation for phase aberration and an unfolding step, HRNet is able to reconstruct phase information directly from holograms by learning the processing steps of phase imaging. This provides a more simplified and efficient solution for phase imaging.

For multi-section object processing, WiMi’s HRNet is capable of generating full-focus images and depth maps to fulfill the need for multi-dimensional data in many applications. This is important for 3D image reconstruction in the medical field, depth perception in automated driving, and surface topography analysis in industrial inspection, etc. HRNet’s ability to process multi-section objects brings greater flexibility and accuracy to these applications.

In addition, WiMi also hopes to promote the integration of holographic technology with other fields through the development of HRNet. For example, in the field of autonomous driving, HRNet can provide more accurate data for depth perception and environment understanding, improving driving safety and intelligence. In the field of AR and VR, HRNet can provide more realistic and lifelike image reconstruction for immersive experiences, enhancing user experience and interactivity.

WiMi will continue its research and development on HRNet to further enhance its performance and functionality. They will continue to improve the network architecture and training algorithms to enable HRNet to handle more complex scenes and objects. At the same time, they will also explore integration with other cutting-edge technologies, such as artificial intelligence, machine learning and big data analysis, to further enhance the capabilities and applications of hologram reconstruction.

As a cutting-edge technology, holography is changing our perception of images and vision. WiMi has been committed to the development of holographic technology, and with the continuous development and application of deep learning technologies such as HRNet, holographic technology will show greater potential and influence in various fields. The noise-free reconstruction and phase imaging capabilities of holograms will bring more accurate, high-quality data and information to medicine, industry, science and other fields. This will promote innovation and development in various industries, advance technological progress and social progress, and bring more value and opportunities to society.

About WIMI Hologram Cloud

WIMI Hologram Cloud, Inc. (NASDAQ:WIMI) is a holographic cloud comprehensive technical solution provider that focuses on professional areas including holographic AR automotive HUD software, 3D holographic pulse LiDAR, head-mounted light field holographic equipment, holographic semiconductor, holographic cloud software, holographic car navigation and others. Its services and holographic AR technologies include holographic AR automotive application, 3D holographic pulse LiDAR technology, holographic vision semiconductor technology, holographic software development, holographic AR advertising technology, holographic AR entertainment technology, holographic ARSDK payment, interactive holographic communication and other holographic AR technologies.

Safe Harbor Statements

This press release contains "forward-looking statements" within the Private Securities Litigation Reform Act of 1995. These forward-looking statements can be identified by terminology such as "will," "expects," "anticipates," "future," "intends," "plans," "believes," "estimates," and similar statements. Statements that are not historical facts, including statements about the Company’s beliefs and expectations, are forward-looking statements. Among other things, the business outlook and quotations from management in this press release and the Company’s strategic and operational plans contain forward−looking statements. The Company may also make written or oral forward−looking statements in its periodic reports to the US Securities and Exchange Commission ("SEC") on Forms 20−F and 6−K, in its annual report to shareholders, in press releases, and other written materials, and in oral statements made by its officers, directors or employees to third parties. Forward-looking statements involve inherent risks and uncertainties. Several factors could cause actual results to differ materially from those contained in any forward−looking statement, including but not limited to the following: the Company’s goals and strategies; the Company’s future business development, financial condition, and results of operations; the expected growth of the AR holographic industry; and the Company’s expectations regarding demand for and market acceptance of its products and services.

Further information regarding these and other risks is included in the Company’s annual report on Form 20-F and the current report on Form 6-K and other documents filed with the SEC. All information provided in this press release is as of the date of this press release. The Company does not undertake any obligation to update any forward-looking statement except as required under applicable laws.

Contacts

WIMI Hologram Cloud Inc.
Email: [email protected]
TEL: 010-53384913

ICR, LLC
Robin Yang
Tel: +1 (646) 975-9495 
Email: [email protected] 

Source : WiMi Developed Deep Learning-based Holographic Reconstruction Network

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