3 research outputs found
SynFog: A Photo-realistic Synthetic Fog Dataset based on End-to-end Imaging Simulation for Advancing Real-World Defogging in Autonomous Driving
To advance research in learning-based defogging algorithms, various synthetic
fog datasets have been developed. However, existing datasets created using the
Atmospheric Scattering Model (ASM) or real-time rendering engines often
struggle to produce photo-realistic foggy images that accurately mimic the
actual imaging process. This limitation hinders the effective generalization of
models from synthetic to real data. In this paper, we introduce an end-to-end
simulation pipeline designed to generate photo-realistic foggy images. This
pipeline comprehensively considers the entire physically-based foggy scene
imaging process, closely aligning with real-world image capture methods. Based
on this pipeline, we present a new synthetic fog dataset named SynFog, which
features both sky light and active lighting conditions, as well as three levels
of fog density. Experimental results demonstrate that models trained on SynFog
exhibit superior performance in visual perception and detection accuracy
compared to others when applied to real-world foggy images
On-Line Temperature Estimation for Noisy Thermal Sensors Using a Smoothing Filter-Based Kalman Predictor
Dynamic thermal management (DTM) mechanisms utilize embedded thermal sensors to collect fine-grained temperature information for monitoring the real-time thermal behavior of multi-core processors. However, embedded thermal sensors are very susceptible to a variety of sources of noise, including environmental uncertainty and process variation. This causes the discrepancies between actual temperatures and those observed by on-chip thermal sensors, which seriously affect the efficiency of DTM. In this paper, a smoothing filter-based Kalman prediction technique is proposed to accurately estimate the temperatures from noisy sensor readings. For the multi-sensor estimation scenario, the spatial correlations among different sensor locations are exploited. On this basis, a multi-sensor synergistic calibration algorithm (known as MSSCA) is proposed to improve the simultaneous prediction accuracy of multiple sensors. Moreover, an infrared imaging-based temperature measurement technique is also proposed to capture the thermal traces of an advanced micro devices (AMD) quad-core processor in real time. The acquired real temperature data are used to evaluate our prediction performance. Simulation shows that the proposed synergistic calibration scheme can reduce the root-mean-square error (RMSE) by 1.2 ∘ C and increase the signal-to-noise ratio (SNR) by 15.8 dB (with a very small average runtime overhead) compared with assuming the thermal sensor readings to be ideal. Additionally, the average false alarm rate (FAR) of the corrected sensor temperature readings can be reduced by 28.6%. These results clearly demonstrate that if our approach is used to perform temperature estimation, the response mechanisms of DTM can be triggered to adjust the voltages, frequencies, and cooling fan speeds at more appropriate times