Improving night time road safety deep learning for semantic segmentation and object detection in thermal infrared images
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Abstract
This research addresses two critical aspects of image processing within the domain
newlineon object detection as well as semantic segmentation at both thermal infrared and urban
newlinelandscape images, aiming to improve the accuracy, efficiency, and robustness related to
newlinesystems for recognizing images.
newlineThe first part of this study focuses on the challenging task of semantic segmentation in thermal infrared images, which are complex and difficult to analyze due to the
newlineintricate nature of their features and the ambiguity in semantic encoding. Traditional
newlinetechniques fall short in fully capturing the crucial information within these images.
newlineTo overcome this, we propose a novel network model named the top-down attention
newlineand gradient alignment-based graph neural network, designed specifically for thermal
newlineinfrared image semantic segmentation. The top-down attention and gradient alignmentbased graph neural network model integrates a top-down guided attention module to
newlinetackle semantic encoding ambiguity effectively and introduces an attention loss function to protect feature coding within a hierarchical manner. Additionally, a gradient
newlinealignment loss is incorporated to address the edge distortion problem during image
newlinetranslation, significantly improving the quality of the segmented outputs. The model is
newlineevaluated using pixel-level annotations from the KAIST dataset, achieving an impressive accuracy of 98.3%. Comparative analysis demonstrates that the top-down attention
newlineand gradient alignment-based graph neural network outperforms existing ones for maintaining semantic data and provides more reliable and accurate thermal infrared imaging
newlinesegmentation findings.
newlineIn the second part of the research, we turn our attention to the problem of precise
newlineitem identification in urban environments, particularly in nighttime infrared images.
newlineEnhancing hue in thermal images is a common focus of present-day models, but they
newlinefail to effectively detect objects in complex urban settings. To narrow this disparity,
newlinewe suggest an innovative strategy that uti