Deep Learning Model Explainability for Inspection Accuracy Improvement in the Automotive Industry
This work addresses the need for more accurate and reliable automated inspection in automotive manufacturing, though it appears incremental as it builds on existing deep learning explainability techniques.
The paper tackled the problem of subjective and expensive manual visual inspection of welding seams in the automotive industry by using a hybrid deep learning method combining prediction scores and visual explanations, resulting in an accuracy improvement of at least 18%.
The welding seams visual inspection is still manually operated by humans in different companies, so the result of the test is still highly subjective and expensive. At present, the integration of deep learning methods for welds classification is a research focus in engineering applications. This work intends to apprehend and emphasize the contribution of deep learning model explainability to the improvement of welding seams classification accuracy and reliability, two of the various metrics affecting the production lines and cost in the automotive industry. For this purpose, we implement a novel hybrid method that relies on combining the model prediction scores and visual explanation heatmap of the model in order to make a more accurate classification of welding seam defects and improve both its performance and its reliability. The results show that the hybrid model performance is relatively above our target performance and helps to increase the accuracy by at least 18%, which presents new perspectives to the developments of deep Learning explainability and interpretability.