Detection is the process of identification and classification is the categorization of the object based on a previously defined classes or types. While both are based on discernible properties of the object, classification could take arbitrary boundaries based on the problem domain and independent of detection.
it seems that the task of object detection is harder.
Whether one is harder than other the other depends on the particular properties being studied, the error margins, accuracy rates, and so forth. For example, if there is a tighter tolerance for detection than classification, then it could be perceived as being harder. But in an iterative application that alternates between the detection and classification, which is harder is probably not that easy to tell.
Does object detection define where the object is located in an image, or reveal how many of the object is in the picture...?
Technically detection is supposed to be unambiguous, perhaps a boolean T or F. All other properties, such as location, how many, and all other properties feed into classification. It is not to say that those properties are not relevant to detection, but that once detected, the task now becomes one of classification. Where that precise line or transformation happens depends on the specific application.