{"schema_version":"1.0","canonical_url":"https://patentable.app/patents/US-9854401","patent":{"patent_number":"US-9854401","title":"Selective filtering of mobile device movement data","assignee":null,"inventors":[],"filing_date":"2017-01-20T00:00:00.000Z","publication_date":"2017-12-26T00:00:00.000Z","cpc_codes":["H04W","G06F","G06F","H04W","H04W","H04W","G06Q","H04M"],"num_claims":14,"abstract":"Processes for searching and identifying mobile devices of interest are provided based, at least in part, on movement of the multiple mobile devices. The process includes, for instance, obtaining movement data of multiple mobile devices, and receiving a specified movement pattern of interest. The movement data of the multiple mobile devices is compared against the specified movement pattern of interest, and based on the comparing, a data structure is generated at least identifying one or more mobile devices of the multiple mobile devices with a movement data closest to the specified movement pattern of interest. In enhanced embodiments, the movement pattern of interest may be a user-specified travel path or a user-specified pattern of zone movements, for instance, within a venue or within a geographic region."},"analysis":{"summary":"The Selective Filtering of Mobile Device Movement Data patent presents a novel approach to identifying and tracking mobile devices based on their movement patterns. The core innovation lies in its ability to selectively filter movement data from multiple mobile devices, comparing it against a specified movement pattern of interest, which could be a user-defined travel path or zone movements within a specific area. This selective filtering process generates a data structure that identifies devices with movement data closest to the defined pattern, enabling efficient and accurate tracking.\n\nThis technology addresses the challenge of sifting through vast amounts of mobile device data to pinpoint specific movements of interest. Current methods often involve broad data collection and analysis, which can be computationally expensive and less precise. The invention overcomes these limitations by focusing on specific movement patterns, reducing noise and improving the accuracy of location-based services.\n\nThe technical approach involves acquiring movement data from various sources, comparing it to a predefined pattern using sophisticated algorithms, and generating a data structure highlighting relevant devices. This selective process allows for targeted tracking and analysis, improving the signal-to-noise ratio and reducing computational overhead.\n\nThe business value of this innovation is significant, with applications spanning multiple industries. In retail, it can optimize store layouts by tracking customer movement. In transportation, it can monitor traffic patterns and identify congestion. In public safety, it can track first responders in emergencies. The market opportunity is substantial, as the demand for efficient and accurate location-based services continues to grow.\n\nOverall, the Selective Filtering of Mobile Device Movement Data patent offers a valuable solution for businesses and organizations seeking to harness the power of location data. By enabling targeted tracking and analysis, this technology promises to unlock new opportunities and improve existing services across a wide range of industries, positioning itself as a key player in the future of location-based services.","layman_explanation":"The Selective Filtering of Mobile Device Movement Data patent addresses a common problem: how to efficiently find specific people or objects in a sea of location data. Imagine trying to track customers in a large shopping mall, or first responders inside a burning building. Current tracking methods often collect a massive amount of data, making it difficult and time-consuming to pinpoint the individuals or patterns you're actually interested in.\n\nThis technology works by selectively filtering mobile device movement data based on specific patterns. Think of it like setting a filter on your email to only show messages from certain senders. In this case, the 'sender' is a specific movement pattern, such as a predefined route or a series of zones. The system compares the movement data of multiple mobile devices against this pattern and identifies the devices that most closely match it. This allows you to focus on the relevant data, ignoring the noise and irrelevant information.\n\nThis innovation matters because it can significantly improve the efficiency and accuracy of location-based services. For businesses, this means better customer insights, optimized operations, and enhanced security. For public safety agencies, it means faster response times and improved coordination during emergencies. The market impact is potentially huge, as the demand for location-aware applications continues to grow across various industries.\n\nLooking ahead, this technology could be further refined to incorporate more sophisticated pattern recognition techniques and integrate with other data sources. As the volume and complexity of location data continue to increase, the need for efficient filtering and analysis methods will only become more critical. This patent provides a solid foundation for future innovation in this area, paving the way for more advanced and personalized location-based services.","technical_analysis":"The Selective Filtering of Mobile Device Movement Data patent details a system architecture designed for efficient and targeted mobile device tracking. The system primarily consists of three core modules: Data Acquisition, Pattern Matching, and Data Structure Generation. The Data Acquisition module is responsible for collecting movement data from various mobile devices. This data can be sourced from GPS signals, Wi-Fi triangulation, cellular network positioning, and inertial sensors. The module must be capable of handling diverse data formats and varying levels of accuracy.\n\nThe Pattern Matching module is the heart of the invention. It compares the acquired movement data against a specified movement pattern of interest. This pattern can be defined as a user-specified travel path or a series of zone movements within a geographic region or venue. The module employs algorithms such as dynamic time warping (DTW), hidden Markov models (HMM), or machine learning classifiers to quantify the similarity between the observed movement data and the specified pattern. The choice of algorithm depends on the complexity of the patterns and the required level of accuracy.\n\nThe Data Structure Generation module creates a data structure that identifies mobile devices with movement data closest to the specified pattern. This data structure might be a ranked list, a cluster of devices, or a probability distribution. The module must efficiently organize and index the data to enable fast retrieval of relevant devices. The performance of the system hinges on the efficiency and accuracy of the pattern matching algorithms. DTW is suitable for aligning time series data, while HMMs are effective for modeling sequential patterns. Machine learning classifiers can be trained to recognize complex movement behaviors.\n\nIntegration with existing location-based services (LBS) platforms is crucial for practical deployment. The system can be integrated via APIs, allowing LBS applications to leverage the filtered movement data for targeted services. Performance considerations include minimizing latency and maximizing throughput. The system must be able to handle a large number of mobile devices and real-time data streams. Code-level implications involve careful optimization of the pattern matching algorithms and efficient memory management.\n\nThis patent offers a significant advancement in mobile device tracking, enabling more targeted and efficient location-based services. By selectively filtering movement data, the system reduces noise and improves accuracy, paving the way for new applications in various industries.","business_analysis":"The Selective Filtering of Mobile Device Movement Data patent presents a significant market opportunity in the burgeoning field of location-based services (LBS). The core value proposition lies in its ability to efficiently and accurately identify mobile devices based on specific movement patterns, addressing a critical need in various industries. The market size for LBS is projected to reach billions of dollars in the coming years, driven by increasing adoption of mobile devices and the growing demand for location-aware applications.\n\nThis patent offers a competitive advantage by providing a more targeted and efficient approach to mobile device tracking compared to existing methods. Traditional LBS solutions often rely on broad data collection and analysis, which can be computationally expensive and less precise. The invention overcomes these limitations by focusing on specific movement patterns, reducing noise and improving accuracy.\n\nThe revenue potential is substantial, with multiple business models possible. These include licensing the technology to LBS providers, offering a subscription-based service for targeted tracking, and developing proprietary applications that leverage the patented technology. Strategic positioning involves targeting industries where accurate and efficient mobile device tracking is paramount, such as retail, transportation, and public safety.\n\nThe ROI projections are compelling. By enabling more targeted and efficient LBS, the invention can help businesses increase revenue, reduce costs, and improve customer satisfaction. For example, retailers can optimize store layouts based on customer movement patterns, transportation companies can improve traffic management, and public safety agencies can enhance emergency response capabilities.\n\nHowever, there are challenges to consider. These include competition from existing LBS providers, the need for significant investment in research and development, and potential privacy concerns. Mitigating these risks requires a strong business strategy, a focus on innovation, and a commitment to protecting user privacy.\n\nOverall, the Selective Filtering of Mobile Device Movement Data patent offers a compelling business opportunity with significant market potential. By providing a more targeted and efficient approach to mobile device tracking, this technology promises to unlock new opportunities and improve existing services across a wide range of industries.","faqs":null,"topics":["mobile device tracking","location data filtering","movement pattern analysis","GPS tracking","patent","selective","filtering","mobile"],"tech_cluster":null},"seo":{"title":"Selective Filtering of Mobile Device Movement Data - Patent US-9854401","description":"Discover how Selective Filtering of Mobile Device Movement Data enhances location tracking. Full patent analysis, claims, and technical details available.","keywords":["mobile device tracking","location data filtering","movement pattern analysis","GPS tracking","patent","patent US-9854401"]},"attribution":{"source":"Patentable","source_url":"https://patentable.app","canonical_url":"https://patentable.app/patents/US-9854401","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-9854401","citation_suggestion":"Patentable. \"Selective filtering of mobile device movement data\" (US-9854401). https://patentable.app/patents/US-9854401","copyright_holder":"Nomic Interactive Technology LLC"},"links":{"html":"https://patentable.app/patents/US-9854401","json":"https://patentable.app/api/llm-context/US-9854401","site":"https://patentable.app","llms_txt":"https://patentable.app/llms.txt"},"generated_at":"2026-05-30T00:26:36.356Z"}