236 research outputs found
Fast Digital Convolutions using Bit-Shifts
An exact, one-to-one transform is presented that not only allows digital
circular convolutions, but is free from multiplications and quantisation errors
for transform lengths of arbitrary powers of two. The transform is analogous to
the Discrete Fourier Transform, with the canonical harmonics replaced by a set
of cyclic integers computed using only bit-shifts and additions modulo a prime
number. The prime number may be selected to occupy contemporary word sizes or
to be very large for cryptographic or data hiding applications. The transform
is an extension of the Rader Transforms via Carmichael's Theorem. These
properties allow for exact convolutions that are impervious to numerical
overflow and to utilise Fast Fourier Transform algorithms.Comment: 4 pages, 2 figures, submitted to IEEE Signal Processing Letter
Fast Mojette Transform for Discrete Tomography
A new algorithm for reconstructing a two dimensional object from a set of one
dimensional projected views is presented that is both computationally exact and
experimentally practical. The algorithm has a computational complexity of O(n
log2 n) with n = N^2 for an NxN image, is robust in the presence of noise and
produces no artefacts in the reconstruction process, as is the case with
conventional tomographic methods. The reconstruction process is approximation
free because the object is assumed to be discrete and utilizes fully discrete
Radon transforms. Noise in the projection data can be suppressed further by
introducing redundancy in the reconstruction. The number of projections
required for exact reconstruction and the response to noise can be controlled
without comprising the digital nature of the algorithm. The digital projections
are those of the Mojette Transform, a form of discrete linogram. A simple
analytical mapping is developed that compacts these projections exactly into
symmetric periodic slices within the Discrete Fourier Transform. A new digital
angle set is constructed that allows the periodic slices to completely fill all
of the objects Discrete Fourier space. Techniques are proposed to acquire these
digital projections experimentally to enable fast and robust two dimensional
reconstructions.Comment: 22 pages, 13 figures, Submitted to Elsevier Signal Processin
Interpretable 3D Multi-Modal Residual Convolutional Neural Network for Mild Traumatic Brain Injury Diagnosis
Mild Traumatic Brain Injury (mTBI) is a significant public health challenge
due to its high prevalence and potential for long-term health effects. Despite
Computed Tomography (CT) being the standard diagnostic tool for mTBI, it often
yields normal results in mTBI patients despite symptomatic evidence. This fact
underscores the complexity of accurate diagnosis. In this study, we introduce
an interpretable 3D Multi-Modal Residual Convolutional Neural Network (MRCNN)
for mTBI diagnostic model enhanced with Occlusion Sensitivity Maps (OSM). Our
MRCNN model exhibits promising performance in mTBI diagnosis, demonstrating an
average accuracy of 82.4%, sensitivity of 82.6%, and specificity of 81.6%, as
validated by a five-fold cross-validation process. Notably, in comparison to
the CT-based Residual Convolutional Neural Network (RCNN) model, the MRCNN
shows an improvement of 4.4% in specificity and 9.0% in accuracy. We show that
the OSM offers superior data-driven insights into CT images compared to the
Grad-CAM approach. These results highlight the efficacy of the proposed
multi-modal model in enhancing the diagnostic precision of mTBI.Comment: Accepted by the Australasian Joint Conference on Artificial
Intelligence 2023 (AJCAI 2023). 12 pages and 5 Figure
Machine Learning Applications in Traumatic Brain Injury: A Spotlight on Mild TBI
Traumatic Brain Injury (TBI) poses a significant global public health
challenge, contributing to high morbidity and mortality rates and placing a
substantial economic burden on healthcare systems worldwide. The diagnosis of
TBI relies on clinical information along with Computed Tomography (CT) scans.
Addressing the multifaceted challenges posed by TBI has seen the development of
innovative, data-driven approaches, for this complex condition. Particularly
noteworthy is the prevalence of mild TBI (mTBI), which constitutes the majority
of TBI cases where conventional methods often fall short. As such, we review
the state-of-the-art Machine Learning (ML) techniques applied to clinical
information and CT scans in TBI, with a particular focus on mTBI. We categorize
ML applications based on their data sources, and there is a spectrum of ML
techniques used to date. Most of these techniques have primarily focused on
diagnosis, with relatively few attempts at predicting the prognosis. This
review may serve as a source of inspiration for future research studies aimed
at improving the diagnosis of TBI using data-driven approaches and standard
diagnostic data.Comment: The manuscript has 34 pages, 3 figures, and 4 table
Enhancing mTBI Diagnosis with Residual Triplet Convolutional Neural Network Using 3D CT
Mild Traumatic Brain Injury (mTBI) is a common and challenging condition to
diagnose accurately. Timely and precise diagnosis is essential for effective
treatment and improved patient outcomes. Traditional diagnostic methods for
mTBI often have limitations in terms of accuracy and sensitivity. In this
study, we introduce an innovative approach to enhance mTBI diagnosis using 3D
Computed Tomography (CT) images and a metric learning technique trained with
triplet loss. To address these challenges, we propose a Residual Triplet
Convolutional Neural Network (RTCNN) model to distinguish between mTBI cases
and healthy ones by embedding 3D CT scans into a feature space. The triplet
loss function maximizes the margin between similar and dissimilar image pairs,
optimizing feature representations. This facilitates better context placement
of individual cases, aids informed decision-making, and has the potential to
improve patient outcomes. Our RTCNN model shows promising performance in mTBI
diagnosis, achieving an average accuracy of 94.3%, a sensitivity of 94.1%, and
a specificity of 95.2%, as confirmed through a five-fold cross-validation.
Importantly, when compared to the conventional Residual Convolutional Neural
Network (RCNN) model, the RTCNN exhibits a significant improvement, showcasing
a remarkable 22.5% increase in specificity, a notable 16.2% boost in accuracy,
and an 11.3% enhancement in sensitivity. Moreover, RTCNN requires lower memory
resources, making it not only highly effective but also resource-efficient in
minimizing false positives while maximizing its diagnostic accuracy in
distinguishing normal CT scans from mTBI cases. The quantitative performance
metrics provided and utilization of occlusion sensitivity maps to visually
explain the model's decision-making process further enhance the
interpretability and transparency of our approach
A Novel Tractor Operated Grass Seed Harvester Developed in India
The demand of green and dry fodder in India is estimated to increase to 1170 and 650 m tonne whereas availability is expected to be at 411.3 and 488 m tonne in 2025, respectively, depicting deficit of about 64.9% green fodder and 24.9% dry fodder (Vision 2030, ICAR - IGFRI, Jhansi, 2011). In forages, availability of quality seed is only 25-30% in cultivated fodder and less than 10 % in range grasses and legumes (Vision 2050, IGFRI). Prices paid for grass seeds of native species vary from Rs.5,000 to 6,500 per kg for clean, un-haired seeds due to excessive use of manual labour in seed collection and removing hairy portion. In order to increase the capacity of collection of grass seeds from standing crop, A tractor operated grass seed harvester was developed under a collaborative research project of Indian Council of Agricultural Research two Institutes viz. Indian Grassland and Fodder Research Institute and Central Institute of Agricultural Engineering, keeping in view the requirements of common grasses used as feed material in Indian context. This grass seed harvester was made using nylon brushes arranged in specific fashion on a rotating cylinder and a winding reel in front of rotating cylinder to collect grass seed from the grasses standing in the fields, where tractor can operate. The specific features of this machine were variable speed of rotating cylinder brush, helical arrangement of brushes on the cylinder to carry the detached seed in to the seed box, variable height of operation and front mounting of the machine on tractor. This machine was tested for seed collection in Pennisetum pedicellatum (Dinanath grass), Cenchrus cilliaris (Anjan grass ) and Megathyrsus maximum (Guinea grass). Seed collection capacity of the machine was 4.24 to 7.12 kg/h in Dinanath grass during 2nd operation, 2.10 to 3.56 kg/h in Anjan grass and 1.61 to 3.56 kg/h in Guinea grass at the full maturity of the grass seeds in two passes of the machine in to and fro direction. The field capacity of seed collection operation ranged from 0.21 to 0.47 ha/h for the grasses in which it was operated
Single Image Compressed Sensing MRI via a Self-Supervised Deep Denoising Approach
Popular methods in compressed sensing (CS) are dependent on deep learning
(DL), where large amounts of data are used to train non-linear reconstruction
models. However, ensuring generalisability over and access to multiple datasets
is challenging to realise for real-world applications. To address these
concerns, this paper proposes a single image, self-supervised (SS) CS-MRI
framework that enables a joint deep and sparse regularisation of CS artefacts.
The approach effectively dampens structured CS artefacts, which can be
difficult to remove assuming sparse reconstruction, or relying solely on the
inductive biases of CNN to produce noise-free images. Image quality is thereby
improved compared to either approach alone. Metrics are evaluated using
Cartesian 1D masks on a brain and knee dataset, with PSNR improving by 2-4dB on
average.Comment: 5 pages, 4 figures, 2 tables, conferenc
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