Hyperparameter Optimization in Deep Learning-Based Object Detection of Branching and Endpoints on 2D Brain Vessel Images
Künye
KAYA, Samet, Berna KİRAZ & Ali Yılmaz ÇAMURCU. "Hyperparameter Optimization in Deep Learning-Based Object Detection of Branching and Endpoints on 2D Brain Vessel Images." 2024 Innovations in Intelligent Systems and Applications Conference, ASYU 2024, (2024): 1-6.Özet
This work presents a deep learning-based object
detection technique for identifying branches and endpoints in
two-dimensional brain vessel images alongside its hyperparameter
optimization. Although traditional image processing methods
are feasible and successful, their algorithm complexity increases
exponentially with the size of the image and the filters to be
applied. In contrast, our deep learning approach has shown
significant improvements in accuracy and efficiency, independent
of image size and number of filters. We preprocess our dataset of
raw mouse brain slices from laboratory environments to remove
noise from images and then extract a binary vein network using
image processing methods. Finally, we labeled vessel branching
and endpoints in 5x5 pixel bounding boxes. All labeled objects
on images were converted to COCO format for training and
testing to ensure compatibility with deep learning algorithms.
Our research focused on using the Faster R-CNN method in
the Detectron2 framework, which has been successful in our
previous work. Evaluation using the intersection over union
(IoU) metric underscores the robustness of our approach, and
we achieved a success rate of over 90%. We employed Optuna
for hyperparameter optimization to further enhance our model,
focusing on three key hyperparameters: base learning rate,
maximum iterations, and batch size per image. We systematically
refined these hyperparameters by running 50 training and test
runs separately, significantly improving model performance to
over 98%. Our findings highlight the transformative potential of
deep learning in neuroimaging analysis and promise significant
advance