11,784 research outputs found

    Video analytics system for surveillance videos

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    Developing an intelligent inspection system that can enhance the public safety is challenging. An efficient video analytics system can help monitor unusual events and mitigate possible damage or loss. This thesis aims to analyze surveillance video data, report abnormal activities and retrieve corresponding video clips. The surveillance video dataset used in this thesis is derived from ALERT Dataset, a collection of surveillance videos at airport security checkpoints. The video analytics system in this thesis can be thought as a pipelined process. The system takes the surveillance video as input, and passes it through a series of processing such as object detection, multi-object tracking, person-bin association and re-identification. In the end, we can obtain trajectories of passengers and baggage in the surveillance videos. Abnormal events like taking away other's belongings will be detected and trigger the alarm automatically. The system could also retrieve the corresponding video clips based on user-defined query

    The Development of a Temporal Information Dictionary for Social Media Analytics

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    Dictionaries have been used to analyze text even before the emergence of social media and the use of dictionaries for sentiment analysis there. While dictionaries have been used to understand the tonality of text, so far it has not been possible to automatically detect if the tonality refers to the present, past, or future. In this research, we develop a dictionary containing time-indicating words in a wordlist (T-wordlist). To test how the dictionary performs, we apply our T-wordlist on different disaster related social media datasets. Subsequently we will validate the wordlist and results by a manual content analysis. So far, in this research-in-progress, we were able to develop a first dictionary and will also provide some initial insight into the performance of our wordlist

    Innovation in a Complex, Uncertain World: Clarifying the Questions, Seeking the Answers

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    Innovation has at least 40 definitions, many of which can lay claim to being reliable and valid guidelines for organizations to make improvements by doing something new and different. Towards the goal of providing insights to facilitate fruitful pursuit of supply chain, the Third Annual World Class Supply Chain Summit focused on the theme of Innovation in a Complex, Uncertain World. At this invitation-only summit on May 9th, 2018 in Milton, Ontario, executives, scholars, and students discussed a range of innovation topics. The core of those discussions sought clarity on the following: The complexities, uncertainties, and challenges that are prompting the need for innovation in contemporary supply chains Effective ways for tapping into the potential to innovate New ideas from the next generation of researchers and practitioners Questions that demand rigorous research about innovation in supply chains The summit addressed those four issues with two keynote presentations, a panel discussion, and three-minute lightning talk presentations by five students (from the doctoral through to the undergraduate level). In addition to giving voice to the next generation (via the students’ 3-minute presentations), the summit was also designed to uncover perspectives from business disciplines outside of supply chain management (SCM). This was reflected mainly in the inclusion of panelists whose expertise on the subject of innovation was built in the field of entrepreneurship. Incorporating perspectives from the next generation and from beyond the traditional scope of SCM proved useful in generating some insightful conclusions. Among those conclusions, four of the main ones are: Effective usage of supply chain analytics has the potential to yield meaningful returns for transportation services providers The creativity necessary for innovation can be learned so employers should invest in cultivating creativity and its application to challenges of interest, particularly for new and young employees Though seemingly bewildering, the complexity and challenges in modern supply chains represent opportunity for innovation Innovations need not be revolutionary in order to be of real value to an organization firm and its stakeholders This white paper reports on (a) the underlying details of those points (e.g., specific real world examples presented to reinforce those points), (b) some critical unanswered questions that surround those points, and (c) potential research projects to address those questions. These helped to solidify the summit as a valuable contributor to industry-academia deliberations of relevance to the SCM field

    Geo-Spotting: Mining Online Location-based Services for Optimal Retail Store Placement

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    The problem of identifying the optimal location for a new retail store has been the focus of past research, especially in the field of land economy, due to its importance in the success of a business. Traditional approaches to the problem have factored in demographics, revenue and aggregated human flow statistics from nearby or remote areas. However, the acquisition of relevant data is usually expensive. With the growth of location-based social networks, fine grained data describing user mobility and popularity of places has recently become attainable. In this paper we study the predictive power of various machine learning features on the popularity of retail stores in the city through the use of a dataset collected from Foursquare in New York. The features we mine are based on two general signals: geographic, where features are formulated according to the types and density of nearby places, and user mobility, which includes transitions between venues or the incoming flow of mobile users from distant areas. Our evaluation suggests that the best performing features are common across the three different commercial chains considered in the analysis, although variations may exist too, as explained by heterogeneities in the way retail facilities attract users. We also show that performance improves significantly when combining multiple features in supervised learning algorithms, suggesting that the retail success of a business may depend on multiple factors.Comment: Proceedings of the 19th ACM SIGKDD international conference on Knowledge discovery and data mining, Chicago, 2013, Pages 793-80

    Automatic Detection of Online Jihadist Hate Speech

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    We have developed a system that automatically detects online jihadist hate speech with over 80% accuracy, by using techniques from Natural Language Processing and Machine Learning. The system is trained on a corpus of 45,000 subversive Twitter messages collected from October 2014 to December 2016. We present a qualitative and quantitative analysis of the jihadist rhetoric in the corpus, examine the network of Twitter users, outline the technical procedure used to train the system, and discuss examples of use.Comment: 31 page

    A holistic review of cybersecurity and reliability perspectives in smart airports

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    Advances in the Internet of Things (IoT) and aviation sector have resulted in the emergence of smart airports. Services and systems powered by the IoT enable smart airports to have enhanced robustness, efficiency and control, governed by real-time monitoring and analytics. Smart sensors control the environmental conditions inside the airport, automate passenger-related actions and support airport security. However, these augmentations and automation introduce security threats to network systems of smart airports. Cyber-attackers demonstrated the susceptibility of IoT systems and networks to Advanced Persistent Threats (APT), due to hardware constraints, software flaws or IoT misconfigurations. With the increasing complexity of attacks, it is imperative to safeguard IoT networks of smart airports and ensure reliability of services, as cyber-attacks can have tremendous consequences such as disrupting networks, cancelling travel, or stealing sensitive information. There is a need to adopt and develop new Artificial Intelligence (AI)-enabled cyber-defence techniques for smart airports, which will address the challenges brought about by the incorporation of IoT systems to the airport business processes, and the constantly evolving nature of contemporary cyber-attacks. In this study, we present a holistic review of existing smart airport applications and services enabled by IoT sensors and systems. Additionally, we investigate several types of cyber defence tools including AI and data mining techniques, and analyse their strengths and weaknesses in the context of smart airports. Furthermore, we provide a classification of smart airport sub-systems based on their purpose and criticality and address cyber threats that can affect the security of smart airport\u27s networks
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