{"schema_version":"1.0","canonical_url":"https://patentable.app/patents/US-9854169","patent":{"patent_number":"US-9854169","title":"Image processing apparatus, image pickup apparatus, image processing method, and non-transitory computer-readable storage medium","assignee":null,"inventors":[],"filing_date":"2015-05-27T00:00:00.000Z","publication_date":"2017-12-26T00:00:00.000Z","cpc_codes":["H04N","G06T","G06T","H04N","G06T","G06T"],"num_claims":17,"abstract":"An image processing apparatus includes a determination unit configured to determine an optical transfer function based on shooting condition information, an acquisition unit configured to acquire shake information, a control unit configured to select a method of image restoration based on the optical transfer function and the shake information, and an image restoration unit configured to perform the image restoration based on the selected method of the image restoration."},"analysis":{"summary":"The Image Processing Apparatus, Image Pickup Apparatus, Image Processing Method, and Non-transitory Computer-readable Storage Medium patent introduces a novel approach to image restoration by dynamically adapting the restoration method based on real-time shooting conditions and shake information. The core innovation lies in its ability to analyze shooting condition information to determine the optical transfer function and acquire shake information, which is then used by a control unit to select the most appropriate image restoration algorithm. This results in significantly improved image clarity and robustness to camera shake and lens imperfections.\n\nThe problem being solved is the degradation of image quality caused by camera shake and imperfect lens optics, which can significantly impair the performance of computer vision systems and reduce the overall quality of captured images. Existing image processing techniques often struggle to effectively correct for both of these factors simultaneously.\n\nThe key technical approach involves a determination unit to analyze shooting conditions, an acquisition unit to capture shake information, and a control unit to select the optimal image restoration algorithm. The image restoration unit then applies the selected algorithm to produce a high-quality image.\n\nThe business value and applications are substantial, with potential benefits for industries such as photography, security, medical imaging, and autonomous vehicles. The ability to capture clearer images in challenging conditions opens up new possibilities for various applications, leading to improved accuracy, efficiency, and safety. The technology can be licensed to existing camera manufacturers and integrated into existing image processing pipelines.\n\nThe market opportunity is significant, with a growing demand for high-quality image processing solutions in various industries. The ability to dynamically adapt to varying shooting conditions and improve image clarity provides a competitive advantage over existing solutions. The technology is poised to play a key role in enabling reliable and accurate computer vision systems, driving further innovation in the field.","layman_explanation":"The Image Processing Apparatus, Image Pickup Apparatus, Image Processing Method, and Non-transitory Computer-readable Storage Medium patent addresses a common problem in photography and imaging: how to produce clear and accurate images when the camera is shaky or the lens isn't perfect.\n\n**1. What Problem Does This Solve? (100-150 words)**\n\nImagine taking a photo while walking or in a moving vehicle. The resulting image is often blurry due to camera shake. Similarly, even high-quality camera lenses can have slight imperfections that distort the image. Current image processing techniques often struggle to correct these issues effectively, especially when both problems occur simultaneously. This patent aims to solve this by providing a more intelligent and adaptive approach to image restoration.\n\n**2. How Does It Work? (200-300 words)**\n\nThink of it like this: the system has two main sensors. One sensor detects how much the camera is shaking. The other sensor analyzes the lens to understand its imperfections. This information is then fed into a 'smart computer' that selects the best way to fix the image. It's like a doctor diagnosing a patient and then choosing the right medicine. The 'smart computer' chooses the best 'medicine' (image restoration algorithm) to correct the image, based on the specific problems it detects. Instead of using the same fix for every image, this system customizes the fix to get the best possible result. This approach ensures that the image processing is optimized for the specific conditions under which the image was captured, leading to significant improvements in image clarity and accuracy.\n\n**3. Why Does This Matter? (150-200 words)**\n\nThis technology has significant implications for various industries. In security, clearer images from surveillance cameras can improve facial recognition. In medical imaging, sharper images can lead to more accurate diagnoses. For autonomous vehicles, improved image processing can enhance navigation and obstacle avoidance. The ability to capture clearer images in challenging conditions opens up new possibilities for various applications, leading to improved accuracy, efficiency, and safety. This translates to real business value by improving the performance and reliability of these systems.\n\n**4. What's Next? (50-100 words)**\n\nFuture applications could include integration into smartphone cameras, drones, and other imaging devices. As image processing technology continues to advance, this patent provides a foundation for further innovation in the field. Market adoption will likely depend on the cost of implementation and the perceived value by consumers and businesses. Investment implications are positive, as this technology has the potential to disrupt the image processing market.","technical_analysis":"The Image Processing Apparatus, Image Pickup Apparatus, Image Processing Method, and Non-transitory Computer-readable Storage Medium patent presents a sophisticated approach to image restoration, focusing on dynamically adapting the restoration method based on real-time conditions. The system architecture comprises three key units: a determination unit, an acquisition unit, and a control unit.\n\nThe determination unit analyzes shooting condition information, such as aperture, shutter speed, and focal length, to establish the optical transfer function (OTF) of the camera lens. The OTF mathematically represents lens aberrations and distortions, providing a basis for correction. The acquisition unit captures shake information using sensors like accelerometers or gyroscopes. This data estimates the motion blur kernel, describing the blurring effect from camera shake.\n\nThe control unit intelligently selects the most appropriate image restoration algorithm from a suite of options, based on both the OTF and the shake information. This selection process allows for targeted correction of lens distortions and deblurring of the image. The image restoration unit then applies the chosen algorithm to the captured image, producing a high-quality, distortion-corrected output.\n\nThe choice of image restoration algorithms is crucial. The patent likely includes a range of algorithms, each with its own strengths and weaknesses. Common algorithms include Wiener filtering (linear filtering minimizing mean square error), Richardson-Lucy deconvolution (iterative algorithm for Poisson noise), and blind deconvolution (estimating both the original image and blur kernel). Algorithm selection depends on the specific image characteristics and distortion types.\n\nImplementation details would involve integrating the determination, acquisition, and control units into a cohesive system. The determination unit would require access to camera settings and lens specifications. The acquisition unit would need to interface with appropriate sensors. The control unit would need to implement a decision-making process for algorithm selection.\n\nPerformance characteristics would depend on the chosen algorithms and the computational resources available. Wiener filtering is relatively computationally efficient, while iterative algorithms like Richardson-Lucy deconvolution can be more demanding. The system's performance would need to be optimized for real-time applications, particularly in areas like autonomous vehicles.\n\nCode-level implications would involve implementing the determination, acquisition, and control units in software or hardware. The image restoration algorithms would need to be implemented efficiently, potentially using specialized libraries or hardware acceleration. The system would need to be integrated into existing image processing pipelines.","business_analysis":"The Image Processing Apparatus, Image Pickup Apparatus, Image Processing Method, and Non-transitory Computer-readable Storage Medium patent offers significant business opportunities across several sectors. Its core value proposition is enhanced image quality through dynamic adaptation to shooting conditions, addressing a pervasive problem in imaging technology.\n\nThe market opportunity is substantial. The demand for high-quality image processing solutions is growing in industries such as photography, security, medical imaging, and autonomous vehicles. The ability to capture clearer images in challenging conditions opens up new possibilities for various applications.\n\nThe competitive advantages are clear. The patent's dynamic adaptation approach distinguishes it from traditional methods that often struggle with complex distortions. This results in superior image clarity and robustness, providing a competitive edge in the market.\n\nThe revenue potential is multifaceted. Licensing the technology to camera manufacturers represents a significant revenue stream. Integrating the technology into existing image processing pipelines offers further commercial opportunities. Direct application in sectors like security and autonomous vehicles provides additional revenue potential.\n\nPotential business models include licensing, software integration, and direct product development. Licensing the technology to camera manufacturers would generate recurring revenue. Integrating the technology into existing software platforms would provide a value-added service. Developing proprietary products incorporating the technology would create a differentiated market offering.\n\nStrategic positioning involves targeting key industries with high demand for image quality. The photography market is a natural fit, as is the security sector, where clear images are critical for surveillance. Medical imaging benefits from enhanced diagnostic accuracy. Autonomous vehicles require robust image processing for safe navigation.\n\nROI projections depend on the chosen business model and market penetration. Licensing agreements can provide a steady stream of revenue with minimal upfront investment. Software integration can generate high margins with relatively low development costs. Direct product development requires more significant investment but offers the potential for higher returns.\n\nOverall, the Image Processing Apparatus, Image Pickup Apparatus, Image Processing Method, and Non-transitory Computer-readable Storage Medium patent presents a compelling business opportunity with significant market potential and diverse revenue streams. Its competitive advantages and strategic positioning make it a valuable asset for companies seeking to enhance their imaging capabilities.","faqs":null,"topics":[],"tech_cluster":null},"seo":{"title":"Image processing apparatus, image pickup apparatus, image processing method, and non-transitory computer-readable storage medium","description":"An image processing apparatus includes a determination unit configured to determine an optical transfer function based on shooting condition information, an acquisition unit configured to acquire shak","keywords":[]},"attribution":{"source":"Patentable","source_url":"https://patentable.app","canonical_url":"https://patentable.app/patents/US-9854169","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-9854169","citation_suggestion":"Patentable. \"Image processing apparatus, image pickup apparatus, image processing method, and non-transitory computer-readable storage medium\" (US-9854169). https://patentable.app/patents/US-9854169","copyright_holder":"Nomic Interactive Technology LLC"},"links":{"html":"https://patentable.app/patents/US-9854169","json":"https://patentable.app/api/llm-context/US-9854169","site":"https://patentable.app","llms_txt":"https://patentable.app/llms.txt"},"generated_at":"2026-05-31T01:32:30.547Z"}