@inproceedings{penzel2023analyzing, type = {inproceedings}, key = {penzel2023analyzing}, title = {Analyzing the Behavior of Cauliflower Harvest-Readiness Models by Investigating Feature Relevances}, author = {Niklas Penzel and Jana Kierdorf and Ribana Roscher and Joachim Denzler}, booktitle = {ICCV Workshop on Computer Vision in Plant Phenotyping and Agriculture (CVPPA)}, abstract = {The performance of a machine learning model is characterized by its ability to accurately represent the input-output relationship and its behavior on unseen data. A prerequisite for high performance is that causal relationships of features with the model outcome are correctly represented. This work analyses the causal relationships by investigating the relevance of features in machine learning models using conditional independence tests. For this, an attribution method based on Pearl's causality framework is employed.Our presented approach analyzes two data-driven models designed for the harvest-readiness prediction of cauliflower plants: one base model and one model where the decision process is adjusted based on local explanations. Additionally, we propose a visualization technique inspired by Partial Dependence Plots to gain further insights into the model behavior. The experiments presented in this paper find that both models learn task-relevant features during fine-tuning when compared to the ImageNet pre-trained weights. However, both models differ in their feature relevance, specifically in whether they utilize the image recording date. The experiments further show that our approach is able to reveal that the adjusted model is able to reduce the trends for the observed biases. Furthermore, the adjusted model maintains the desired behavior for the semantically meaningful feature of cauliflower head diameter, predicting higher harvest-readiness scores for higher feature realizations, which is consistent with existing domain knowledge. The proposed investigation approach can be applied to other domain-specific tasks to aid practitioners in evaluating model choices.}, month = {October}, year = {2023}, pages = {572-581}, groups = {understanding-dl,biodiversity}, }