![]() ![]() We report fire localization accuracy in terms of mean average precision (object detection), which has not been done earlier for embedded AFDL systems. We present combined evaluation results showing that our methodology and the corresponding AFDL model strikes a balance between the frames inferred per second and several accuracy metrics. This article presents an approach to automate the hardware-software co-design to find the optimum parameter partitioning for a given MTL problem, especially when some parts of the model are hardware accelerated. To achieve the target inference rate for the AFDL deployment, we have investigated the effect of quantization and compression due to hardware acceleration on an MTL model. It also resulted in a single unified model, capable of running on “on-board” compute infrastructure without compromising on accuracy. The multi-task learning (MTL) approach for end-to-end training of a stitched classifier and object localizer model on diverse datasets enabled us to build a strong fire classifier and feature extractor. This presents only fire images to a relatively weaker localization model, reducing false positives, false negatives, and thereby improving overall AFDL accuracy. We have tried to address both problems with a multi-task learned cascaded model that triggers localization workflow only if the presence of fire is detected, through a strong classifier trained on available large fire datasets. ![]() Deep Learning–based classifiers perform well for fire/no-fire classification due to the availability of large datasets for training however, a dearth of good fire localization datasets renders the localization performance below par. ![]() Traditional computer vision–based techniques require hand-engineered features on a case-by-case basis. The importance of AFDL on resource-constrained devices has further grown, as most unmanned vehicles (drones or ground vehicles) are battery operated with limited computational capacity, the disaster situations cannot guarantee uninterrupted communication with high-end resources in the cloud, and yet faster response time is a prime necessity. ![]() Automated fire detection and localization (AFDL) systems have grown in importance with the evolution of applied robotics, especially because use of robots in disaster situations can lead to avoidance of human fatality. Fire-related incidents continue to be reported as a leading cause of life and property destruction. ![]()
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