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Dive into the research topics where Tristan Kleinschmidt is active.

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Featured researches published by Tristan Kleinschmidt.


Transport Reviews | 2012

Wayfinding: A simple concept, a complex process

Anna Charisse Farr; Tristan Kleinschmidt; Prasad K. Yarlagadda; Kerrie Mengersen

Wayfinding is the process of finding your way to a destination in a familiar or unfamiliar setting using any cues given by the environment. Due to its ubiquity in everyday life, wayfinding appears on the surface to be a simply characterized and understood process; however, this very ubiquity and the resulting need to refine and optimize wayfinding has led to a great number of studies that have revealed that it is in fact a deeply complex exercise. In this article, we examine the motivations for investigating wayfinding, with particular attention being paid to the unique challenges faced in transportation hubs, and discuss the associated principles and factors involved as they have been perceived from different research perspectives. We also review the approaches used to date in the modelling of wayfinding in various contexts. We attempt to draw together the different perspectives applied to wayfinding and postulate the importance of wayfinding and the need to understand this seemingly simple, but concurrently complex, process.


Expert Systems With Applications | 2015

Automatic surveillance in transportation hubs

Simon Denman; Tristan Kleinschmidt; David Ryan; Paul H. Barnes; Sridha Sridharan; Clinton Fookes

Surveillance and video analytics systems are typically only used for security.We explore how emerging video analytics can support security and operations needs.A conceptual framework combining security and operations is proposed.An analysis of the proposed framework as applied to an airport is presented.We show how many technologies have dual applications, and the benefits this brings. As critical infrastructure such as transportation hubs continue to grow in complexity, greater importance is placed on monitoring these facilities to ensure their secure and efficient operation. In order to achieve these goals, technology continues to evolve in response to the needs of various infrastructure. To date, however, the focus of technology for surveillance has been primarily concerned with security, and little attention has been placed on assisting operations and monitoring performance in real-time. Consequently, solutions have emerged to provide real-time measurements of queues and crowding in spaces, but have been installed as system add-ons (rather than making better use of existing infrastructure), resulting in expensive infrastructure outlay for the owner/operator, and an overload of surveillance systems which in itself creates further complexity. Given many critical infrastructure already have camera networks installed, it is much more desirable to better utilise these networks to address operational monitoring as well as security needs.Recently, a growing number of approaches have been proposed to monitor operational aspects such as pedestrian throughput, crowd size and dwell times. In this paper, we explore how these techniques relate to and complement the more commonly seen security analytics, and demonstrate the value that can be added by operational analytics by demonstrating their performance on airport surveillance data. We explore how multiple analytics and systems can be combined to better leverage the large amount of data that is available, and we discuss the applicability and resulting benefits of the proposed framework for the ongoing operation of airports and airport networks.


2009 IEEE Workshop on Computational Intelligence in Vehicles and Vehicular Systems | 2009

FPGA implementation of spectral subtraction for automotive speech recognition

Jim Whittington; Kapeel Deo; Tristan Kleinschmidt; Michael Mason

The use of speech recognition in noisy automotive environments requires the application of speech enhancement algorithms to improve recognition performance. Deploying these enhancement techniques necessitates significant engineering to ensure algorithms are realisable in electronic hardware. This paper describes advances in porting the popular spectral subtraction algorithm to a Spartan-3A DSP field-programmable gate array (FPGA) device suitable for integration in automotive environments. Resource analysis shows the final design uses only 13% of the total available general logic resources making it suitable for integration with other in-car devices on a single FPGA. Speech recognition experiments have been used to verify the effectiveness of the FPGA implementation for in-car speech recognition in comparison with an equivalent floating-point implementation.


Transport | 2014

Investigating effective wayfinding in airports: a Bayesian network approach

Anna Charisse Farr; Tristan Kleinschmidt; Sandra Johnson; Prasad K. Yarlagadda; Kerrie Mengersen

Effective Wayfinding is the successful interplay of human and environmental factors resulting in a person successfully moving from their current position to a desired location in a timely manner. To date this process has not been modelled to reflect this interplay. This paper proposes a complex modelling system approach of wayfinding by using Bayesian Networks to model this process, and applies the model to airports. The model suggests that human factors have a greater impact on effective wayfinding in airports than environmental factors. The greatest influences on human factors are found to be the level of spatial anxiety experienced by travellers and their cognitive and spatial skills. The model also predicted that the navigation pathway that a traveller must traverse has a larger impact on the effectiveness of an airport’s environment in promoting effective wayfinding than the terminal design.


winter simulation conference | 2011

Check-in processing: simulation of passengers with advanced traits

Wenbo Ma; Tristan Kleinschmidt; Clinton Fookes; Prasad K. Yarlagadda

In order to tackle the growth of air travelers in airports worldwide, it is important to simulate and understand passenger flows to predict future capacity constraints and levels of service. We discuss the ability of agent-based models to understand complicated pedestrian movement in built environments. In this paper we propose advanced passenger traits to enable more detailed modeling of behaviors in terminal buildings, particularly in the departure hall around the check-in facilities. To demonstrate the concepts, we perform a series of passenger agent simulations in a virtual airport terminal. In doing so, we generate a spatial distribution of passengers within the departure hall to ancillary facilities such as cafes, information kiosks and phone booths as well as common check-in facilities, and observe the effects this has on passenger check-in and departure hall dwell times, and facility utilization.


Journal of the Acoustical Society of America | 2010

Impact of cognitive load and frustration on drivers’ speech.

Hynek Bořil; Tristan Kleinschmidt; Pinar Boyraz; John H. L. Hansen

Secondary tasks such as cell phone calls or interaction with automated speech dialog systems (SDSs) increase the driver’s cognitive load as well as the probability of driving errors. This study analyzes speech production variations due to cognitive load and emotional state of drivers in real driving conditions. Speech samples were acquired from 24 female and 17 male subjects (approximately 8.5 h of data) while talking to a co-driver and communicating with two automated call centers, with emotional states (neutral, negative) and the number of necessary SDS query repetitions also labeled. A consistent shift in a number of speech production parameters (pitch, first format center frequency, spectral center of gravity, spectral energy spread, and duration of voiced segments) was observed when comparing SDS interaction against co-driver interaction; further increases were observed when considering negative emotion segments and the number of requested SDS query repetitions. A mel frequency cepstral coefficient based Gaussian mixture classifier trained on 10 male and 10 female sessions provided 91% accuracy in the open test set task of distinguishing co-driver interactions from SDS interactions, suggesting—together with the acoustic analysis—that it is possible to monitor the level of driver distraction directly from their speech.


international conference on vehicular electronics and safety | 2009

Assessment of speech dialog systems using multi-modal cognitive load analysis and driving performance metrics

Tristan Kleinschmidt; Pinar Boyraz; Hynek Brril; Sridha Sridharan; John H. L. Hansen

In this paper, cognitive load analysis via acoustic-and CAN-Bus-based driver performance metrics is employed to assess two different commercial speech dialog systems (SDS) during in-vehicle use. Several metrics are proposed to measure increases in stress, distraction and cognitive load and we compare these measures with statistical analysis of the speech recognition component of each SDS. It is found that care must be taken when designing an SDS as it may increase cognitive load which can be observed through increased speech response delay (SRD), changes in speech production due to negative emotion towards the SDS, and decreased driving performance on lateral control tasks. From this study, guidelines are presented for designing systems which are to be used in vehicular environments.


Science & Engineering Faculty | 2012

A Likelihood-Maximizing Framework for Enhanced In-Car Speech Recognition Based on Speech Dialog System Interaction

Tristan Kleinschmidt; Sridha Sridharan; Michael Mason

Speech recognition in car environments has been identified as a valuable means for reducing driver distraction when operating noncritical in-car systems. Under such conditions, however, speech recognition accuracy degrades significantly, and techniques such as speech enhancement are required to improve these accuracies. Likelihood-maximizing (LIMA) frameworks optimize speech enhancement algorithms based on recognized state sequences rather than traditional signal-level criteria such as maximizing signal-to-noise ratio. LIMA frameworks typically require calibration utterances to generate optimized enhancement parameters that are used for all subsequent utterances. Under such a scheme, suboptimal recognition performance occurs in noise conditions that are significantly different from that present during the calibration session – a serious problem in rapidly changing noise environments out on the open road. In this chapter, we propose a dialog-based design that allows regular optimization iterations in order to track the ever-changing noise conditions. Experiments using Mel-filterbank noise subtraction (MFNS) are performed to determine the optimization requirements for vehicular environments and show that minimal optimization is required to improve speech recognition, avoid over-optimization, and ultimately assist with semi-real-time operation. It is also shown that the proposed design is able to provide improved recognition performance over frameworks incorporating a calibration session only.


international conference on acoustics, speech, and signal processing | 2009

The Australian English Speech Corpus for In-Car Speech processing

Tristan Kleinschmidt; Michael Mason; Eddie Wong; Sridha Sridharan

The Australian In-Car Speech Corpus is a multi-channel recording of a series of prompts from an in-car navigation task collected over a range of speakers in a variety of driving conditions. Its purpose is to provide a significant resource of speech data appropriate for investigating speech processing needs in the adverse environment of a car. Utterances spoken by 50 speakers were collected in seven different driving conditions, providing the foundation for investigation into noisy, speaker-independent speech processing. Speech recognition experiments are performed to validate the data, to provide baseline results for in-car speech recognition research, and to show that this data can improve speech recognition performance under adverse in-car conditions for Australian English when adapting from American English acoustic models.


Faculty of Built Environment and Engineering; Information Security Institute | 2010

Analysis and detection of cognitive load and frustration in drivers' speech

Hynek Boril; Seyed Omid Sadjadi; Tristan Kleinschmidt; John H. L. Hansen

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Sridha Sridharan

Queensland University of Technology

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Michael Mason

Queensland University of Technology

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Prasad K. Yarlagadda

Queensland University of Technology

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Clinton Fookes

Queensland University of Technology

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Anna Charisse Farr

Queensland University of Technology

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Kerrie Mengersen

Queensland University of Technology

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John H. L. Hansen

University of Texas at Dallas

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Wenbo Ma

Queensland University of Technology

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Hynek Boril

University of Texas at Dallas

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