{"schema_version":"1.0","canonical_url":"https://patentable.app/patents/US-9854264","patent":{"patent_number":"US-9854264","title":"Image coding method and image decoding method","assignee":null,"inventors":[],"filing_date":"2016-09-30T00:00:00.000Z","publication_date":"2017-12-26T00:00:00.000Z","cpc_codes":["H04N","H04N","H04N","H04N","H04N","H04N","H04N"],"num_claims":1,"abstract":"An image coding method for improving coding efficiency by using more appropriate probability information is provided. The image coding method includes: a first coding step of coding a first set of blocks included in a first region sequentially based on first probability information; and a second coding step of coding a second set of blocks included in a second region sequentially based on second probability information. In the first coding step, the first probability information is updated depending on data of a target block to be coded, after coding the target block and before coding a next target block. In the second coding step, the second probability information is updated depending on the first probability information updated in the first coding step, before coding the first target block."},"analysis":{"summary":"The Image Coding Method and Image Decoding Method patent presents an innovative approach to image compression that aims to improve coding efficiency by utilizing more appropriate probability information. The core innovation lies in a two-step coding process: first, a set of blocks within a first region is coded sequentially based on initial probability information, which is then updated depending on the data of the coded block. Second, a second set of blocks in a second region is coded sequentially based on the updated probability information from the first step. This dynamic updating of probability information allows for more efficient coding, leading to reduced bandwidth requirements and improved image quality.\n\nThe problem being solved is the ever-increasing demand for efficient image compression techniques to handle the growing volume of high-resolution images and video content. Existing compression methods often struggle to adapt to the varying characteristics of image data, resulting in suboptimal compression ratios and increased bandwidth consumption.\n\nThe key technical approach involves the dynamic updating of probability information during the coding process. This adaptive approach allows the system to learn the statistical properties of the image data on-the-fly, resulting in more efficient coding decisions. The two-step coding process further enhances the efficiency by leveraging the updated probability information from the first region to code the second region.\n\nThe business value of this technology lies in its potential to reduce bandwidth costs, improve the quality of video streaming, and enable new applications such as remote medical imaging and high-resolution video conferencing. The market opportunity is significant, as the demand for efficient image compression is growing rapidly across various industries.\n\nThe market opportunity is substantial, encompassing video streaming services, medical imaging, telecommunications, and data storage, all of which benefit from improved image compression efficiency.","layman_explanation":"The Image Coding Method and Image Decoding Method patent addresses the growing problem of efficiently storing and transmitting digital images. As image and video resolution increases, the file sizes become larger, requiring more storage space and bandwidth. Existing image compression techniques, while effective to a degree, often fall short in adapting to the unique characteristics of different images, leading to suboptimal compression and increased costs.\n\nThis innovation works by analyzing images in a novel way, dividing them into regions and then coding these regions based on dynamic probability assessments. Imagine you're organizing a closet. Instead of just throwing everything in randomly, you first group similar items together (like shirts, pants, and shoes). Then, you figure out the best way to fold or hang each group to save space. The Image Coding Method and Image Decoding Method does something similar with images, constantly adjusting its compression strategy to optimize for the best possible outcome.\n\nThis matters because it can significantly reduce the costs associated with storing and transmitting images. For businesses, this could mean lower cloud storage fees, faster website loading times, and improved video streaming quality. For consumers, it translates to smoother online experiences and the ability to store more photos and videos on their devices. The competitive advantage comes from the technology's ability to adapt to different image types, providing consistently high compression rates.\n\nLooking ahead, this technology could be integrated into a wide range of applications, from smartphones and digital cameras to cloud storage services and video conferencing platforms. As the demand for high-quality visual content continues to grow, the need for efficient image compression will only become more critical, making this innovation a valuable asset in the digital landscape. Investment in this area could yield significant returns as the technology becomes more widely adopted.","technical_analysis":"The Image Coding Method and Image Decoding Method patent introduces a novel approach to image coding by focusing on adaptive probability estimation. The technical architecture revolves around a two-step coding process designed to enhance compression efficiency. In the first step, a set of blocks within a defined region is coded sequentially, relying on initial probability information. A critical aspect of this stage is the dynamic updating of these probability estimates after each block is processed. This adaptation to local image characteristics forms the cornerstone of the innovation. The second step leverages these updated probabilities to code a subsequent region, facilitating more informed and efficient compression.\n\nImplementation details suggest the utilization of context-adaptive binary arithmetic coding (CABAC) principles, but with a key difference: the contexts are not fixed. Instead, they are dynamically adjusted based on the data encountered during the first coding step. This dynamic adjustment allows the system to learn the statistical properties of the image data on-the-fly. The algorithm specifics would likely involve sophisticated statistical models to accurately estimate and update the probabilities. The integration patterns would involve replacing or augmenting existing CABAC implementations in video codecs.\n\nPerformance characteristics are expected to show improved compression ratios compared to traditional CABAC implementations, especially in images with non-stationary statistics. However, the computational complexity of the probability updating process could be a limiting factor. Code-level implications involve significant modifications to existing CABAC encoders and decoders. The system would need to be carefully optimized for real-time performance, especially in video encoding applications. The memory footprint of the dynamic probability tables would also need to be managed efficiently.\n\nThe patent claims that this approach leads to improved coding efficiency. This claim is supported by the fact that the system adapts to the specific characteristics of the image data, allowing it to make more informed coding decisions. However, the actual performance improvement will depend on the specific implementation and the characteristics of the images being coded. Further research is needed to evaluate the performance of this technology in different scenarios and to compare it to other advanced coding techniques. The implications are significant, potentially leading to smaller file sizes and faster transmission times for images and videos. However, the practical challenges of implementation and the need for compatibility with existing systems need to be carefully considered.","business_analysis":"The Image Coding Method and Image Decoding Method patent holds significant commercial potential within the image and video compression market. The core value proposition is improved coding efficiency, which translates to reduced bandwidth consumption, faster transmission times, and lower storage costs. This has direct implications for various industries, including video streaming, telecommunications, medical imaging, and data storage.\n\nThe market opportunity is substantial. The global video streaming market is projected to reach billions of dollars in the coming years, driven by the increasing demand for online video content. The telecommunications industry is also facing increasing pressure to deliver high-bandwidth services, such as 4K video streaming, to mobile devices. The medical imaging market is experiencing rapid growth, driven by the increasing use of advanced imaging techniques such as MRI and CT scans. All of these industries can benefit from the improved compression efficiency offered by this technology.\n\nThe competitive advantages of this technology lie in its adaptive probability estimation approach. This allows the system to learn the statistical properties of the image data on-the-fly, resulting in more efficient coding decisions. This is particularly important in scenarios where the image statistics are non-stationary or unpredictable. The revenue potential is significant. The technology can be licensed to video codec vendors, streaming service providers, and other companies that need to compress images and videos. The business model could involve upfront licensing fees, royalty payments based on usage, or a combination of both.\n\nStrategic positioning is critical. The patent holder needs to establish partnerships with key players in the video compression ecosystem, such as codec vendors and streaming service providers. They also need to demonstrate the performance of this technology in real-world scenarios. ROI projections are highly dependent on the licensing terms and the adoption rate. However, given the large market opportunity and the potential cost savings, the ROI could be substantial.\n\nThe patent also faces the challenge of competing with established compression standards such as H.264 and H.265. To gain widespread adoption, the new technology will need to demonstrate a clear advantage in terms of compression efficiency, computational complexity, and compatibility with existing hardware and software. Furthermore, the patent holder will need to navigate the complex landscape of intellectual property rights in the video compression industry.","faqs":null,"topics":["image coding","image decoding","image compression","video streaming","bandwidth","image","coding","method"],"tech_cluster":null},"seo":{"title":"Image Coding Method and Image Decoding Method - Patent US-9854264","description":"Discover how the Image Coding Method and Image Decoding Method patent improves image compression efficiency with dynamic probability updates. Full patent analysis and claims.","keywords":["image coding","image decoding","image compression","video streaming","bandwidth","compression efficiency","patent","patent US-9854264"]},"attribution":{"source":"Patentable","source_url":"https://patentable.app","canonical_url":"https://patentable.app/patents/US-9854264","license":"CC-BY-4.0-like","license_terms":"AI-generated analysis on this page (summary, layman_explanation, technical_analysis, business_analysis, faqs) may be reused with attribution and a visible link back to the canonical URL above. Patent abstracts, claims, and bibliographic data are USPTO public domain.","required_link":"https://patentable.app/patents/US-9854264","citation_suggestion":"Patentable. \"Image coding method and image decoding method\" (US-9854264). https://patentable.app/patents/US-9854264","copyright_holder":"Nomic Interactive Technology LLC"},"links":{"html":"https://patentable.app/patents/US-9854264","json":"https://patentable.app/api/llm-context/US-9854264","site":"https://patentable.app","llms_txt":"https://patentable.app/llms.txt"},"generated_at":"2026-05-31T05:10:31.402Z"}