In the challenging fight against illegal poaching and human trafficking, researchers from Washington University in St. Louis’s McKelvey School of Engineering have devised a smart solution to enhance geospatial exploration. The problem at hand is how to efficiently search large areas to find and stop such activities. The current methods for local searches are limited by constraints, like the number of times one can search in a specific location.
Currently, there are methods to conduct local searches, but they face challenges regarding efficiency and adaptability. The challenge lies in deciding which areas to search first, given limited opportunities, and how to determine the next search location based on the findings. A team of researchers from Washington University in St. Louis sought to address this by developing a novel Visual Active Search (VAS) framework that combines computer vision and adaptive learning to improve search techniques.
The VAS framework consists of three main components: an image of the entire search area divided into regions, a local search function to check if a specific object is present in a given region, and a fixed search budget that regulates the frequency of the local search function’s execution. This framework aims to maximize the detection of objects within the allocated search budget. It builds on prior research in the field, combining active search with visual reasoning and harnessing the synergy between human efforts and artificial intelligence (AI).
The researchers introduced a spatial correlation between regions to scale up and adapt the active search to cover large areas efficiently. They presented their findings at a conference, showcasing that their approach outperformed existing methods. The metrics demonstrated their VAS framework’s capabilities in maximizing object detection within the given search constraints.
Looking ahead, the researchers plan to explore ways to expand the application of their framework. They aim to tailor the model for different domains, including wildlife conservation, search and rescue operations, and environmental monitoring. They have also presented a highly adaptable version of their search framework, capable of efficiently searching for various objects, even when they differ significantly from the ones the model is trained on.
In conclusion, the researchers have developed a promising solution to the challenges of geospatial exploration in combating illegal activities. Their VAS framework combines computer vision and adaptive learning, effectively guiding physical search processes in large areas with constrained search opportunities. The scalability and adaptability of their approach demonstrate its promise for practical use in different fields, meeting the demand for efficient and impactful search methods.
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Niharika is a Technical consulting intern at Marktechpost. She is a third year undergraduate, currently pursuing her B.Tech from Indian Institute of Technology(IIT), Kharagpur. She is a highly enthusiastic individual with a keen interest in Machine learning, Data science and AI and an avid reader of the latest developments in these fields.