--- license: mit language: - en pretty_name: HW1 Image Dataset --- # Dataset Card for {{ pretty_name | default("Dataset Name", true) }} This dataset covers 32 original photos of 6 landmarks at Carnegie Mellon University along with 320 pieces of artifial data. This could be used for image identification tasks or geolocation tasks. ## Dataset Details ### Dataset Description - **Curated by:** Carnegie Mellon University: 24-679 - **Shared by [optional]:** Devin DeCosmo - **Language(s) (NLP):** English - **License:** MIT ### Dataset Sources [optional] - **Repository:** {{ repo | default("[More Information Needed]", true)}} ## Uses The main use was to train tabular machine learning models to predict what landmark is being shown or to predict the GPS location of a landmark in an image. ### Direct Use The direct use would be location or geolocal positioning tasks. ### Out-of-Scope Use ## Dataset Structure This dataset consists of two splits An original split with 32 photos An artificial split with 320 photos The tasks fall into 6 categories based on the building pictured 1. Arts Building 2. Football Stadium 3. Gates Center 4. Hamerschlag Hall 5. Scaife Hall 6. Staircase to the Sky ## Dataset Creation ### Source Data Source data is photos from a Moto 5G around CMU campus #### Data Collection and Processing Data for this was collected by the owner using a personal phone #### Who are the source data producers? Data was initially produced by the owner. ## Bias, Risks, and Limitations This is a very small data set and will likely have issues with training and fitting, especially for more complex identification problems. ### Recommendations This dataset probably has limited accuracy as a first draft but may be useful for learning how to train models.